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40 Commits

Author SHA1 Message Date
Alexander Engelsberger
9bb2e20dce
build: bump version 1.0.0a7 → 1.0.0a8 2022-10-26 14:53:52 +02:00
Alexander Engelsberger
6748951b63
ci: temporarily remove 3.11 2022-10-26 13:31:52 +02:00
Alexander Engelsberger
c547af728b
ci: add refurb to pre-commit config 2022-10-26 13:19:45 +02:00
Alexander Engelsberger
482044ec87
ci: update pre-commit configuration 2022-10-26 13:03:15 +02:00
Alexander Engelsberger
45f01f39d4
ci: add python 3.11 to ci 2022-10-26 12:58:05 +02:00
Alexander Engelsberger
9ab864fbdf
chore: add simple test to fix github action 2022-10-26 12:57:45 +02:00
Alexander Engelsberger
365e0fb931
feat: add useful callbacks for GMLVQ
omega trace normalization and matrix profile visualization
2022-09-21 13:23:43 +02:00
Alexander Engelsberger
ba50dfba50
fix: accuracy as torchmetric fixed 2022-09-21 10:22:35 +02:00
Alexander Engelsberger
16ca409f07
feat: metric callback defaults on epoch 2022-08-26 10:58:33 +02:00
Alexander Engelsberger
c3cad19853
build: bump version 1.0.0a6 → 1.0.0a7 2022-08-19 12:17:32 +02:00
Alexander Engelsberger
ec294bdd37
feat: add omega parameter api 2022-08-19 12:15:11 +02:00
Alexander Engelsberger
e0abb1f3de
build: bump version 1.0.0a5 → 1.0.0a6 2022-08-16 16:13:20 +02:00
Alexander Engelsberger
918e599c6a
fix: wrong copied version 2022-08-16 16:13:03 +02:00
Alexander Engelsberger
ec61881ca8
fix: Add support for other LinearTransform initializers 2022-08-16 15:55:05 +02:00
Alexander Engelsberger
5a89f24c10
feat: remove old architecture 2022-08-15 12:14:14 +02:00
Alexander Engelsberger
bcf9c6bdb1 Merge branch 'feature/better-hparams' of github.com:si-cim/prototorch_models into feature/better-hparams 2022-06-24 15:05:53 +02:00
Alexander Engelsberger
736565b768 feat: metrics can be assigned to the different phases 2022-06-24 15:04:35 +02:00
Jensun Ravichandran
94730f492b
fix(vis): plot prototypes after data 2022-06-14 19:59:13 +02:00
Alexander Engelsberger
46ec7b07d7 build: bump version 1.0.0a4 → 1.0.0a5 2022-06-12 12:49:31 +02:00
Alexander Engelsberger
07dab5a5ca fix: save_hyperparameters ignore did not work 2022-06-12 12:48:58 +02:00
Alexander Engelsberger
ed83138e1f build: bump version 1.0.0a3 → 1.0.0a4 2022-06-12 11:52:06 +02:00
Alexander Engelsberger
1be7d7ec09 fix: dont save component initializer as hparm 2022-06-12 11:40:33 +02:00
Alexander Engelsberger
60d2a1d2c9 fix: dont save prototype initializer in yarch checkpoint 2022-06-12 11:12:55 +02:00
Alexander Engelsberger
be7d7f43bd fix: fix problems with y architecture and checkpoint 2022-06-12 10:36:15 +02:00
Alexander Engelsberger
fe729781fc build: bump version 1.0.0a2 → 1.0.0a3 2022-06-09 14:59:07 +02:00
Alexander Engelsberger
a7df7be1c8 feat: add confusion matrix callback 2022-06-09 14:55:59 +02:00
Alexander Engelsberger
696719600b build: bump version 1.0.0a1 → 1.0.0a2 2022-06-03 11:52:50 +02:00
Alexander Engelsberger
48e7c029fa fix: Fix __init__.py 2022-06-03 11:40:45 +02:00
Alexander Engelsberger
5de3a480c7 build: bump version 0.5.2 → 1.0.0a1 2022-06-03 11:07:10 +02:00
Alexander Engelsberger
626f51ce80 ci: Add possible prerelease to bumpversion 2022-06-03 11:06:44 +02:00
Alexander Engelsberger
6d7d93c8e8 chore: rename y_arch to y 2022-06-03 10:39:11 +02:00
Jensun Ravichandran
93b1d0bd46
feat(vis): add flag to save visualization frames 2022-06-02 19:55:03 +02:00
Alexander Engelsberger
b7992c01db fix: apply hotfix 2022-06-01 14:26:37 +02:00
Alexander Engelsberger
23d1a71b31
feat: distribute GMLVQ into mixins 2022-05-31 17:56:03 +02:00
Alexander Engelsberger
e922aae432
feat: add GMLVQ with new architecture 2022-05-19 16:13:08 +02:00
Alexander Engelsberger
3e50d0d817
chore(protoy): mixin restructuring 2022-05-18 15:43:09 +02:00
Alexander Engelsberger
dc4f31d700
chore: rename clc-lc to proto-Y-architecture 2022-05-18 14:11:46 +02:00
Alexander Engelsberger
02954044d7
chore: improve clc-lc test 2022-05-17 17:26:03 +02:00
Alexander Engelsberger
8f08ba66ea
feat: copy old clc-lc implementation 2022-05-17 16:25:43 +02:00
Alexander Engelsberger
e0b92e9ac2
chore: move mixins to seperate file 2022-05-17 16:19:47 +02:00
47 changed files with 1278 additions and 3316 deletions

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@ -1,9 +1,11 @@
[bumpversion]
current_version = 0.5.2
current_version = 1.0.0a8
commit = True
tag = True
parse = (?P<major>\d+)\.(?P<minor>\d+)\.(?P<patch>\d+)
serialize = {major}.{minor}.{patch}
parse = (?P<major>\d+)\.(?P<minor>\d+)\.(?P<patch>\d+)((?P<release>[a-zA-Z0-9_.-]+))?
serialize =
{major}.{minor}.{patch}-{release}
{major}.{minor}.{patch}
message = build: bump version {current_version} → {new_version}
[bumpversion:file:setup.py]

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@ -21,7 +21,7 @@ jobs:
run: |
python -m pip install --upgrade pip
pip install .[all]
- uses: pre-commit/action@v2.0.3
- uses: pre-commit/action@v3.0.0
compatibility:
needs: style
strategy:
@ -36,7 +36,8 @@ jobs:
python-version: "3.8"
- os: windows-latest
python-version: "3.9"
- os: windows-latest
python-version: "3.11"
runs-on: ${{ matrix.os }}
steps:
- uses: actions/checkout@v2

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@ -3,9 +3,10 @@
repos:
- repo: https://github.com/pre-commit/pre-commit-hooks
rev: v4.2.0
rev: v4.3.0
hooks:
- id: trailing-whitespace
exclude: (^\.bumpversion\.cfg$|cli_messages\.py)
- id: end-of-file-fixer
- id: check-yaml
- id: check-added-large-files
@ -13,7 +14,7 @@ repos:
- id: check-case-conflict
- repo: https://github.com/myint/autoflake
rev: v1.4
rev: v1.7.7
hooks:
- id: autoflake
@ -23,7 +24,7 @@ repos:
- id: isort
- repo: https://github.com/pre-commit/mirrors-mypy
rev: v0.950
rev: v0.982
hooks:
- id: mypy
files: prototorch
@ -42,7 +43,7 @@ repos:
- id: python-check-blanket-noqa
- repo: https://github.com/asottile/pyupgrade
rev: v2.32.1
rev: v3.1.0
hooks:
- id: pyupgrade
@ -51,3 +52,8 @@ repos:
hooks:
- id: gitlint
args: [--contrib=CT1, --ignore=B6, --msg-filename]
- repo: https://github.com/dosisod/refurb
rev: v1.4.0
hooks:
- id: refurb

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@ -23,7 +23,7 @@ author = "Jensun Ravichandran"
# The full version, including alpha/beta/rc tags
#
release = "0.5.2"
release = "1.0.0-a8"
# -- General configuration ---------------------------------------------------

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@ -23,6 +23,13 @@ ProtoTorch Models Plugins
custom
.. toctree::
:hidden:
:maxdepth: 3
:caption: Proto Y Architecture
y-architecture
About
-----------------------------------------
`Prototorch Models <https://github.com/si-cim/prototorch_models>`_ is a Plugin
@ -33,8 +40,10 @@ prototype-based Machine Learning algorithms using `PyTorch-Lightning
Library
-----------------------------------------
Prototorch Models delivers many application ready models.
These models have been published in the past and have been adapted to the Prototorch library.
These models have been published in the past and have been adapted to the
Prototorch library.
Customizable
-----------------------------------------
Prototorch Models also contains the building blocks to build own models with PyTorch-Lightning and Prototorch.
Prototorch Models also contains the building blocks to build own models with
PyTorch-Lightning and Prototorch.

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@ -71,7 +71,7 @@ Probabilistic Models
Probabilistic variants assume, that the prototypes generate a probability distribution over the classes.
For a test sample they return a distribution instead of a class assignment.
The following two algorihms were presented by :cite:t:`seo2003` .
The following two algorithms were presented by :cite:t:`seo2003` .
Every prototypes is a center of a gaussian distribution of its class, generating a mixture model.
.. autoclass:: prototorch.models.probabilistic.SLVQ
@ -80,7 +80,7 @@ Every prototypes is a center of a gaussian distribution of its class, generating
.. autoclass:: prototorch.models.probabilistic.RSLVQ
:members:
:cite:t:`villmann2018` proposed two changes to RSLVQ: First incooperate the winning rank into the prior probability calculation.
:cite:t:`villmann2018` proposed two changes to RSLVQ: First incorporate the winning rank into the prior probability calculation.
And second use divergence as loss function.
.. autoclass:: prototorch.models.probabilistic.PLVQ
@ -106,7 +106,7 @@ Visualization
Visualization is very specific to its application.
PrototorchModels delivers visualization for two dimensional data and image data.
The visulizations can be shown in a seperate window and inside a tensorboard.
The visualizations can be shown in a separate window and inside a tensorboard.
.. automodule:: prototorch.models.vis
:members:

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@ -0,0 +1,71 @@
.. Documentation of the updated Architecture.
Proto Y Architecture
========================================
Overview
****************************************
The Proto Y Architecture is a framework for abstract prototype learning methods.
It divides the problem into multiple steps:
* **Components** : Recalling the position and metadata of the components/prototypes.
* **Backbone** : Apply a mapping function to data and prototypes.
* **Comparison** : Calculate a dissimilarity based on the latent positions.
* **Competition** : Calculate competition values based on the comparison and the metadata.
* **Loss** : Calculate the loss based on the competition values
* **Inference** : Predict the output based on the competition values.
Depending on the phase (Training or Testing) Loss or Inference is used.
Inheritance Structure
****************************************
The Proto Y Architecture has a single base class that defines all steps and hooks
of the architecture.
.. autoclass:: prototorch.y.architectures.base.BaseYArchitecture
**Steps**
Components
.. automethod:: init_components
.. automethod:: components
Backbone
.. automethod:: init_backbone
.. automethod:: backbone
Comparison
.. automethod:: init_comparison
.. automethod:: comparison
Competition
.. automethod:: init_competition
.. automethod:: competition
Loss
.. automethod:: init_loss
.. automethod:: loss
Inference
.. automethod:: init_inference
.. automethod:: inference
**Hooks**
Torchmetric
.. automethod:: register_torchmetric
Hyperparameters
****************************************
Every model implemented with the Proto Y Architecture has a set of hyperparameters,
which is stored in the ``HyperParameters`` attribute of the architecture.

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@ -1,67 +0,0 @@
"""CBC example using the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
from prototorch.models import CBC, VisCBC2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris(dims=[0, 2])
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=32)
# Hyperparameters
hparams = dict(
distribution=[1, 0, 3],
margin=0.1,
proto_lr=0.01,
bb_lr=0.01,
)
# Initialize the model
model = CBC(
hparams,
components_initializer=pt.initializers.SSCI(train_ds, noise=0.1),
reasonings_initializer=pt.initializers.
PurePositiveReasoningsInitializer(),
)
# Callbacks
vis = VisCBC2D(
data=train_ds,
title="CBC Iris Example",
resolution=100,
axis_off=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
detect_anomaly=True,
log_every_n_steps=1,
max_epochs=1000,
)
# Training loop
trainer.fit(model, train_loader)

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@ -1,99 +0,0 @@
"""Dynamically prune 'loser' prototypes in GLVQ-type models."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
CELVQ,
PruneLoserPrototypes,
VisGLVQ2D,
)
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
num_classes = 4
num_features = 2
num_clusters = 1
train_ds = pt.datasets.Random(
num_samples=500,
num_classes=num_classes,
num_features=num_features,
num_clusters=num_clusters,
separation=3.0,
seed=42,
)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=256)
# Hyperparameters
prototypes_per_class = num_clusters * 5
hparams = dict(
distribution=(num_classes, prototypes_per_class),
lr=0.2,
)
# Initialize the model
model = CELVQ(
hparams,
prototypes_initializer=pt.initializers.FVCI(2, 3.0),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Summary
logging.info(model)
# Callbacks
vis = VisGLVQ2D(train_ds)
pruning = PruneLoserPrototypes(
threshold=0.01, # prune prototype if it wins less than 1%
idle_epochs=20, # pruning too early may cause problems
prune_quota_per_epoch=2, # prune at most 2 prototypes per epoch
frequency=1, # prune every epoch
verbose=True,
)
es = EarlyStopping(
monitor="train_loss",
min_delta=0.001,
patience=20,
mode="min",
verbose=True,
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
pruning,
es,
],
detect_anomaly=True,
log_every_n_steps=1,
max_epochs=1000,
)
# Training loop
trainer.fit(model, train_loader)

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@ -1,79 +0,0 @@
"""GLVQ example using the Iris dataset."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import GLVQ, VisGLVQ2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.optim.lr_scheduler import ExponentialLR
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=UserWarning)
warnings.filterwarnings("ignore", category=PossibleUserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris(dims=[0, 2])
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=64, num_workers=4)
# Hyperparameters
hparams = dict(
distribution={
"num_classes": 3,
"per_class": 4
},
lr=0.01,
)
# Initialize the model
model = GLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SMCI(train_ds),
lr_scheduler=ExponentialLR,
lr_scheduler_kwargs=dict(gamma=0.99, verbose=False),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
max_epochs=100,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)
# Manual save
trainer.save_checkpoint("./glvq_iris.ckpt")
# Load saved model
new_model = GLVQ.load_from_checkpoint(
checkpoint_path="./glvq_iris.ckpt",
strict=False,
)
logging.info(new_model)

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@ -1,73 +1,144 @@
"""GMLVQ example using the Iris dataset."""
import logging
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import GMLVQ, VisGMLVQ2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.optim.lr_scheduler import ExponentialLR
from torch.utils.data import DataLoader
import torchmetrics
from prototorch.core import SMCI, PCALinearTransformInitializer
from prototorch.datasets import Iris
from prototorch.models.architectures.base import Steps
from prototorch.models.callbacks import (
LogTorchmetricCallback,
PlotLambdaMatrixToTensorboard,
VisGMLVQ2D,
)
from prototorch.models.library.gmlvq import GMLVQ
from pytorch_lightning.callbacks import EarlyStopping
from torch.utils.data import DataLoader, random_split
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
logging.basicConfig(level=logging.INFO)
if __name__ == "__main__":
# ##############################################################################
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
def main():
# ------------------------------------------------------------
# DATA
# ------------------------------------------------------------
# Dataset
train_ds = pt.datasets.Iris()
full_dataset = Iris()
full_count = len(full_dataset)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=64)
train_count = int(full_count * 0.5)
val_count = int(full_count * 0.4)
test_count = int(full_count * 0.1)
# Hyperparameters
hparams = dict(
train_dataset, val_dataset, test_dataset = random_split(
full_dataset, (train_count, val_count, test_count))
# Dataloader
train_loader = DataLoader(
train_dataset,
batch_size=1,
num_workers=4,
shuffle=True,
)
val_loader = DataLoader(
val_dataset,
batch_size=1,
num_workers=4,
shuffle=False,
)
test_loader = DataLoader(
test_dataset,
batch_size=1,
num_workers=0,
shuffle=False,
)
# ------------------------------------------------------------
# HYPERPARAMETERS
# ------------------------------------------------------------
# Select Initializer
components_initializer = SMCI(full_dataset)
# Define Hyperparameters
hyperparameters = GMLVQ.HyperParameters(
lr=dict(components_layer=0.1, _omega=0),
input_dim=4,
latent_dim=4,
distribution={
"num_classes": 3,
"per_class": 2
},
proto_lr=0.01,
bb_lr=0.01,
distribution=dict(
num_classes=3,
per_class=1,
),
component_initializer=components_initializer,
omega_initializer=PCALinearTransformInitializer,
omega_initializer_kwargs=dict(
data=train_dataset.dataset[train_dataset.indices][0]))
# Create Model
model = GMLVQ(hyperparameters)
# ------------------------------------------------------------
# TRAINING
# ------------------------------------------------------------
# Controlling Callbacks
recall = LogTorchmetricCallback(
'training_recall',
torchmetrics.Recall,
num_classes=3,
step=Steps.TRAINING,
)
# Initialize the model
model = GMLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SMCI(train_ds),
lr_scheduler=ExponentialLR,
lr_scheduler_kwargs=dict(gamma=0.99, verbose=False),
stopping_criterion = LogTorchmetricCallback(
'validation_recall',
torchmetrics.Recall,
num_classes=3,
step=Steps.VALIDATION,
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 4)
accuracy = LogTorchmetricCallback(
'validation_accuracy',
torchmetrics.Accuracy,
num_classes=3,
step=Steps.VALIDATION,
)
# Callbacks
vis = VisGMLVQ2D(data=train_ds)
es = EarlyStopping(
monitor=stopping_criterion.name,
mode="max",
patience=10,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
# Visualization Callback
vis = VisGMLVQ2D(data=full_dataset)
# Define trainer
trainer = pl.Trainer(
callbacks=[
vis,
recall,
accuracy,
stopping_criterion,
es,
PlotLambdaMatrixToTensorboard(),
],
max_epochs=100,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)
# Train
trainer.fit(model, train_loader, val_loader)
trainer.test(model, test_loader)
# Manual save
trainer.save_checkpoint("./y_arch.ckpt")
# Load saved model
new_model = GMLVQ.load_from_checkpoint(
checkpoint_path="./y_arch.ckpt",
strict=True,
)
if __name__ == "__main__":
main()

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@ -1,112 +0,0 @@
"""GMLVQ example using the MNIST dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
ImageGMLVQ,
PruneLoserPrototypes,
VisImgComp,
)
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
from torchvision import transforms
from torchvision.datasets import MNIST
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = MNIST(
"~/datasets",
train=True,
download=True,
transform=transforms.Compose([
transforms.ToTensor(),
]),
)
test_ds = MNIST(
"~/datasets",
train=False,
download=True,
transform=transforms.Compose([
transforms.ToTensor(),
]),
)
# Dataloaders
train_loader = DataLoader(train_ds, num_workers=4, batch_size=256)
test_loader = DataLoader(test_ds, num_workers=4, batch_size=256)
# Hyperparameters
num_classes = 10
prototypes_per_class = 10
hparams = dict(
input_dim=28 * 28,
latent_dim=28 * 28,
distribution=(num_classes, prototypes_per_class),
proto_lr=0.01,
bb_lr=0.01,
)
# Initialize the model
model = ImageGMLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SMCI(train_ds),
)
# Callbacks
vis = VisImgComp(
data=train_ds,
num_columns=10,
show=False,
tensorboard=True,
random_data=100,
add_embedding=True,
embedding_data=200,
flatten_data=False,
)
pruning = PruneLoserPrototypes(
threshold=0.01,
idle_epochs=1,
prune_quota_per_epoch=10,
frequency=1,
verbose=True,
)
es = EarlyStopping(
monitor="train_loss",
min_delta=0.001,
patience=15,
mode="min",
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
pruning,
es,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""GMLVQ example using the spiral dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
GMLVQ,
PruneLoserPrototypes,
VisGLVQ2D,
)
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Spiral(num_samples=500, noise=0.5)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=256)
# Hyperparameters
num_classes = 2
prototypes_per_class = 10
hparams = dict(
distribution=(num_classes, prototypes_per_class),
transfer_function="swish_beta",
transfer_beta=10.0,
proto_lr=0.1,
bb_lr=0.1,
input_dim=2,
latent_dim=2,
)
# Initialize the model
model = GMLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SSCI(train_ds, noise=1e-2),
)
# Callbacks
vis = VisGLVQ2D(
train_ds,
show_last_only=False,
block=False,
)
pruning = PruneLoserPrototypes(
threshold=0.01,
idle_epochs=10,
prune_quota_per_epoch=5,
frequency=5,
replace=True,
prototypes_initializer=pt.initializers.SSCI(train_ds, noise=1e-1),
verbose=True,
)
es = EarlyStopping(
monitor="train_loss",
min_delta=1.0,
patience=5,
mode="min",
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
es,
pruning,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Growing Neural Gas example using the Iris dataset."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import GrowingNeuralGas, VisNG2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Reproducibility
seed_everything(seed=42)
# Prepare the data
train_ds = pt.datasets.Iris(dims=[0, 2])
train_loader = DataLoader(train_ds, batch_size=64)
# Hyperparameters
hparams = dict(
num_prototypes=5,
input_dim=2,
lr=0.1,
)
# Initialize the model
model = GrowingNeuralGas(
hparams,
prototypes_initializer=pt.initializers.ZCI(2),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Model summary
logging.info(model)
# Callbacks
vis = VisNG2D(data=train_loader)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
max_epochs=100,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""GTLVQ example using the MNIST dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
ImageGTLVQ,
PruneLoserPrototypes,
VisImgComp,
)
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
from torchvision import transforms
from torchvision.datasets import MNIST
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = MNIST(
"~/datasets",
train=True,
download=True,
transform=transforms.Compose([
transforms.ToTensor(),
]),
)
test_ds = MNIST(
"~/datasets",
train=False,
download=True,
transform=transforms.Compose([
transforms.ToTensor(),
]),
)
# Dataloaders
train_loader = DataLoader(train_ds, num_workers=0, batch_size=256)
test_loader = DataLoader(test_ds, num_workers=0, batch_size=256)
# Hyperparameters
num_classes = 10
prototypes_per_class = 1
hparams = dict(
input_dim=28 * 28,
latent_dim=28,
distribution=(num_classes, prototypes_per_class),
proto_lr=0.01,
bb_lr=0.01,
)
# Initialize the model
model = ImageGTLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SMCI(train_ds),
#Use one batch of data for subspace initiator.
omega_initializer=pt.initializers.PCALinearTransformInitializer(
next(iter(train_loader))[0].reshape(256, 28 * 28)))
# Callbacks
vis = VisImgComp(
data=train_ds,
num_columns=10,
show=False,
tensorboard=True,
random_data=100,
add_embedding=True,
embedding_data=200,
flatten_data=False,
)
pruning = PruneLoserPrototypes(
threshold=0.01,
idle_epochs=1,
prune_quota_per_epoch=10,
frequency=1,
verbose=True,
)
es = EarlyStopping(
monitor="train_loss",
min_delta=0.001,
patience=15,
mode="min",
check_on_train_epoch_end=True,
)
# Setup trainer
# using GPUs here is strongly recommended!
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
pruning,
es,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Localized-GTLVQ example using the Moons dataset."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import GTLVQ, VisGLVQ2D
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Reproducibility
seed_everything(seed=2)
# Dataset
train_ds = pt.datasets.Moons(num_samples=300, noise=0.2, seed=42)
# Dataloaders
train_loader = DataLoader(
train_ds,
batch_size=256,
shuffle=True,
)
# Hyperparameters
# Latent_dim should be lower than input dim.
hparams = dict(distribution=[1, 3], input_dim=2, latent_dim=1)
# Initialize the model
model = GTLVQ(hparams,
prototypes_initializer=pt.initializers.SMCI(train_ds))
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Summary
logging.info(model)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
es = EarlyStopping(
monitor="train_acc",
min_delta=0.001,
patience=20,
mode="max",
verbose=False,
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
es,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""k-NN example using the Iris dataset from scikit-learn."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import KNN, VisGLVQ2D
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from sklearn.datasets import load_iris
from sklearn.model_selection import train_test_split
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
X, y = load_iris(return_X_y=True)
X = X[:, 0:3:2]
X_train, X_test, y_train, y_test = train_test_split(
X,
y,
test_size=0.5,
random_state=42,
)
train_ds = pt.datasets.NumpyDataset(X_train, y_train)
test_ds = pt.datasets.NumpyDataset(X_test, y_test)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=16)
test_loader = DataLoader(test_ds, batch_size=16)
# Hyperparameters
hparams = dict(k=5)
# Initialize the model
model = KNN(hparams, data=train_ds)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Summary
logging.info(model)
# Callbacks
vis = VisGLVQ2D(
data=(X_train, y_train),
resolution=200,
block=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
max_epochs=1,
callbacks=[
vis,
],
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
# This is only for visualization. k-NN has no training phase.
trainer.fit(model, train_loader)
# Recall
y_pred = model.predict(torch.tensor(X_train))
logging.info(y_pred)
# Test
trainer.test(model, dataloaders=test_loader)

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"""Kohonen Self Organizing Map."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from matplotlib import pyplot as plt
from prototorch.models import KohonenSOM
from prototorch.utils.colors import hex_to_rgb
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader, TensorDataset
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
class Vis2DColorSOM(pl.Callback):
def __init__(self, data, title="ColorSOMe", pause_time=0.1):
super().__init__()
self.title = title
self.fig = plt.figure(self.title)
self.data = data
self.pause_time = pause_time
def on_train_epoch_end(self, trainer, pl_module: KohonenSOM):
ax = self.fig.gca()
ax.cla()
ax.set_title(self.title)
h, w = pl_module._grid.shape[:2]
protos = pl_module.prototypes.view(h, w, 3)
ax.imshow(protos)
ax.axis("off")
# Overlay color names
d = pl_module.compute_distances(self.data)
wp = pl_module.predict_from_distances(d)
for i, iloc in enumerate(wp):
plt.text(
iloc[1],
iloc[0],
color_names[i],
ha="center",
va="center",
bbox=dict(facecolor="white", alpha=0.5, lw=0),
)
if trainer.current_epoch != trainer.max_epochs - 1:
plt.pause(self.pause_time)
else:
plt.show(block=True)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Reproducibility
seed_everything(seed=42)
# Prepare the data
hex_colors = [
"#000000", "#0000ff", "#00007f", "#1f86ff", "#5466aa", "#997fff",
"#00ff00", "#ff0000", "#00ffff", "#ff00ff", "#ffff00", "#ffffff",
"#545454", "#7f7f7f", "#a8a8a8", "#808000", "#800080", "#ffa500"
]
color_names = [
"black", "blue", "darkblue", "skyblue", "greyblue", "lilac", "green",
"red", "cyan", "magenta", "yellow", "white", "darkgrey", "mediumgrey",
"lightgrey", "olive", "purple", "orange"
]
colors = list(hex_to_rgb(hex_colors))
data = torch.Tensor(colors) / 255.0
train_ds = TensorDataset(data)
train_loader = DataLoader(train_ds, batch_size=8)
# Hyperparameters
hparams = dict(
shape=(18, 32),
alpha=1.0,
sigma=16,
lr=0.1,
)
# Initialize the model
model = KohonenSOM(
hparams,
prototypes_initializer=pt.initializers.RNCI(3),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 3)
# Model summary
logging.info(model)
# Callbacks
vis = Vis2DColorSOM(data=data)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
max_epochs=500,
callbacks=[
vis,
],
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Localized-GMLVQ example using the Moons dataset."""
import argparse
import logging
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import LGMLVQ, VisGLVQ2D
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Reproducibility
seed_everything(seed=2)
# Dataset
train_ds = pt.datasets.Moons(num_samples=300, noise=0.2, seed=42)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=256, shuffle=True)
# Hyperparameters
hparams = dict(
distribution=[1, 3],
input_dim=2,
latent_dim=2,
)
# Initialize the model
model = LGMLVQ(
hparams,
prototypes_initializer=pt.initializers.SMCI(train_ds),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Summary
logging.info(model)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
es = EarlyStopping(
monitor="train_acc",
min_delta=0.001,
patience=20,
mode="max",
verbose=False,
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
es,
],
log_every_n_steps=1,
max_epochs=1000,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""LVQMLN example using all four dimensions of the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
LVQMLN,
PruneLoserPrototypes,
VisSiameseGLVQ2D,
)
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
class Backbone(torch.nn.Module):
def __init__(self, input_size=4, hidden_size=10, latent_size=2):
super().__init__()
self.input_size = input_size
self.hidden_size = hidden_size
self.latent_size = latent_size
self.dense1 = torch.nn.Linear(self.input_size, self.hidden_size)
self.dense2 = torch.nn.Linear(self.hidden_size, self.latent_size)
self.activation = torch.nn.Sigmoid()
def forward(self, x):
x = self.activation(self.dense1(x))
out = self.activation(self.dense2(x))
return out
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris()
# Reproducibility
seed_everything(seed=42)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=150)
# Hyperparameters
hparams = dict(
distribution=[3, 4, 5],
proto_lr=0.001,
bb_lr=0.001,
)
# Initialize the backbone
backbone = Backbone()
# Initialize the model
model = LVQMLN(
hparams,
prototypes_initializer=pt.initializers.SSCI(
train_ds,
transform=backbone,
),
backbone=backbone,
)
# Callbacks
vis = VisSiameseGLVQ2D(
data=train_ds,
map_protos=False,
border=0.1,
resolution=500,
axis_off=True,
)
pruning = PruneLoserPrototypes(
threshold=0.01,
idle_epochs=20,
prune_quota_per_epoch=2,
frequency=10,
verbose=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
pruning,
],
log_every_n_steps=1,
max_epochs=1000,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Median-LVQ example using the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import MedianLVQ, VisGLVQ2D
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris(dims=[0, 2])
# Dataloaders
train_loader = DataLoader(
train_ds,
batch_size=len(train_ds), # MedianLVQ cannot handle mini-batches
)
# Initialize the model
model = MedianLVQ(
hparams=dict(distribution=(3, 2), lr=0.01),
prototypes_initializer=pt.initializers.SSCI(train_ds),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
es = EarlyStopping(
monitor="train_acc",
min_delta=0.01,
patience=5,
mode="max",
verbose=True,
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
es,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Neural Gas example using the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import NeuralGas, VisNG2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from sklearn.datasets import load_iris
from sklearn.preprocessing import StandardScaler
from torch.optim.lr_scheduler import ExponentialLR
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Prepare and pre-process the dataset
x_train, y_train = load_iris(return_X_y=True)
x_train = x_train[:, 0:3:2]
scaler = StandardScaler()
scaler.fit(x_train)
x_train = scaler.transform(x_train)
train_ds = pt.datasets.NumpyDataset(x_train, y_train)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=150)
# Hyperparameters
hparams = dict(
num_prototypes=30,
input_dim=2,
lr=0.03,
)
# Initialize the model
model = NeuralGas(
hparams,
prototypes_initializer=pt.core.ZCI(2),
lr_scheduler=ExponentialLR,
lr_scheduler_kwargs=dict(gamma=0.99, verbose=False),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Callbacks
vis = VisNG2D(data=train_ds)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""RSLVQ example using the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import RSLVQ, VisGLVQ2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Reproducibility
seed_everything(seed=42)
# Dataset
train_ds = pt.datasets.Iris(dims=[0, 2])
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=64)
# Hyperparameters
hparams = dict(
distribution=[2, 2, 3],
proto_lr=0.05,
lambd=0.1,
variance=1.0,
input_dim=2,
latent_dim=2,
bb_lr=0.01,
)
# Initialize the model
model = RSLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.SSCI(train_ds, noise=0.2),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
detect_anomaly=True,
max_epochs=100,
log_every_n_steps=1,
)
# Training loop
trainer.fit(model, train_loader)

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"""Siamese GLVQ example using all four dimensions of the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import SiameseGLVQ, VisSiameseGLVQ2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
class Backbone(torch.nn.Module):
def __init__(self, input_size=4, hidden_size=10, latent_size=2):
super().__init__()
self.input_size = input_size
self.hidden_size = hidden_size
self.latent_size = latent_size
self.dense1 = torch.nn.Linear(self.input_size, self.hidden_size)
self.dense2 = torch.nn.Linear(self.hidden_size, self.latent_size)
self.activation = torch.nn.Sigmoid()
def forward(self, x):
x = self.activation(self.dense1(x))
out = self.activation(self.dense2(x))
return out
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris()
# Reproducibility
seed_everything(seed=2)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=150)
# Hyperparameters
hparams = dict(
distribution=[1, 2, 3],
proto_lr=0.01,
bb_lr=0.01,
)
# Initialize the backbone
backbone = Backbone()
# Initialize the model
model = SiameseGLVQ(
hparams,
prototypes_initializer=pt.initializers.SMCI(train_ds),
backbone=backbone,
both_path_gradients=False,
)
# Callbacks
vis = VisSiameseGLVQ2D(data=train_ds, border=0.1)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Siamese GTLVQ example using all four dimensions of the Iris dataset."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import SiameseGTLVQ, VisSiameseGLVQ2D
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
warnings.filterwarnings("ignore", category=UserWarning)
class Backbone(torch.nn.Module):
def __init__(self, input_size=4, hidden_size=10, latent_size=2):
super().__init__()
self.input_size = input_size
self.hidden_size = hidden_size
self.latent_size = latent_size
self.dense1 = torch.nn.Linear(self.input_size, self.hidden_size)
self.dense2 = torch.nn.Linear(self.hidden_size, self.latent_size)
self.activation = torch.nn.Sigmoid()
def forward(self, x):
x = self.activation(self.dense1(x))
out = self.activation(self.dense2(x))
return out
if __name__ == "__main__":
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Dataset
train_ds = pt.datasets.Iris()
# Reproducibility
seed_everything(seed=2)
# Dataloaders
train_loader = DataLoader(train_ds, batch_size=150)
# Hyperparameters
hparams = dict(
distribution=[1, 2, 3],
proto_lr=0.01,
bb_lr=0.01,
input_dim=2,
latent_dim=1,
)
# Initialize the backbone
backbone = Backbone(latent_size=hparams["input_dim"])
# Initialize the model
model = SiameseGTLVQ(
hparams,
prototypes_initializer=pt.initializers.SMCI(train_ds),
backbone=backbone,
both_path_gradients=False,
)
# Callbacks
vis = VisSiameseGLVQ2D(data=train_ds, border=0.1)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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"""Warm-starting GLVQ with prototypes from Growing Neural Gas."""
import argparse
import warnings
import prototorch as pt
import pytorch_lightning as pl
import torch
from prototorch.models import (
GLVQ,
KNN,
GrowingNeuralGas,
PruneLoserPrototypes,
VisGLVQ2D,
)
from pytorch_lightning.callbacks import EarlyStopping
from pytorch_lightning.utilities.seed import seed_everything
from pytorch_lightning.utilities.warnings import PossibleUserWarning
from torch.optim.lr_scheduler import ExponentialLR
from torch.utils.data import DataLoader
warnings.filterwarnings("ignore", category=PossibleUserWarning)
if __name__ == "__main__":
# Reproducibility
seed_everything(seed=4)
# Command-line arguments
parser = argparse.ArgumentParser()
parser = pl.Trainer.add_argparse_args(parser)
args = parser.parse_args()
# Prepare the data
train_ds = pt.datasets.Iris(dims=[0, 2])
train_loader = DataLoader(train_ds, batch_size=64, num_workers=0)
# Initialize the gng
gng = GrowingNeuralGas(
hparams=dict(num_prototypes=5, insert_freq=2, lr=0.1),
prototypes_initializer=pt.initializers.ZCI(2),
lr_scheduler=ExponentialLR,
lr_scheduler_kwargs=dict(gamma=0.99, verbose=False),
)
# Callbacks
es = EarlyStopping(
monitor="loss",
min_delta=0.001,
patience=20,
mode="min",
verbose=False,
check_on_train_epoch_end=True,
)
# Setup trainer for GNG
trainer = pl.Trainer(
max_epochs=1000,
callbacks=[
es,
],
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(gng, train_loader)
# Hyperparameters
hparams = dict(
distribution=[],
lr=0.01,
)
# Warm-start prototypes
knn = KNN(dict(k=1), data=train_ds)
prototypes = gng.prototypes
plabels = knn.predict(prototypes)
# Initialize the model
model = GLVQ(
hparams,
optimizer=torch.optim.Adam,
prototypes_initializer=pt.initializers.LCI(prototypes),
labels_initializer=pt.initializers.LLI(plabels),
lr_scheduler=ExponentialLR,
lr_scheduler_kwargs=dict(gamma=0.99, verbose=False),
)
# Compute intermediate input and output sizes
model.example_input_array = torch.zeros(4, 2)
# Callbacks
vis = VisGLVQ2D(data=train_ds)
pruning = PruneLoserPrototypes(
threshold=0.02,
idle_epochs=2,
prune_quota_per_epoch=5,
frequency=1,
verbose=True,
)
es = EarlyStopping(
monitor="train_loss",
min_delta=0.001,
patience=10,
mode="min",
verbose=True,
check_on_train_epoch_end=True,
)
# Setup trainer
trainer = pl.Trainer.from_argparse_args(
args,
callbacks=[
vis,
pruning,
es,
],
max_epochs=1000,
log_every_n_steps=1,
detect_anomaly=True,
)
# Training loop
trainer.fit(model, train_loader)

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@ -1,39 +1,25 @@
"""`models` plugin for the `prototorch` package."""
from .architectures.base import BaseYArchitecture
from .architectures.comparison import (
OmegaComparisonMixin,
SimpleComparisonMixin,
)
from .architectures.competition import WTACompetitionMixin
from .architectures.components import SupervisedArchitecture
from .architectures.loss import GLVQLossMixin
from .architectures.optimization import (
MultipleLearningRateMixin,
SingleLearningRateMixin,
)
from .callbacks import PrototypeConvergence, PruneLoserPrototypes
from .cbc import CBC, ImageCBC
from .glvq import (
GLVQ,
GLVQ1,
GLVQ21,
GMLVQ,
GRLVQ,
GTLVQ,
LGMLVQ,
LVQMLN,
ImageGLVQ,
ImageGMLVQ,
ImageGTLVQ,
SiameseGLVQ,
SiameseGMLVQ,
SiameseGTLVQ,
)
from .knn import KNN
from .lvq import (
LVQ1,
LVQ21,
MedianLVQ,
)
from .probabilistic import (
CELVQ,
RSLVQ,
SLVQ,
)
from .unsupervised import (
GrowingNeuralGas,
KohonenSOM,
NeuralGas,
)
from .vis import *
__all__ = [
'BaseYArchitecture',
"OmegaComparisonMixin",
"SimpleComparisonMixin",
"SingleLearningRateMixin",
"MultipleLearningRateMixin",
"SupervisedArchitecture",
"WTACompetitionMixin",
"GLVQLossMixin",
]
__version__ = "0.5.2"
__version__ = "1.0.0-a8"

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"""Abstract classes to be inherited by prototorch models."""
import logging
import pytorch_lightning as pl
import torch
import torch.nn.functional as F
import torchmetrics
from prototorch.core.competitions import WTAC
from prototorch.core.components import (
AbstractComponents,
Components,
LabeledComponents,
)
from prototorch.core.distances import euclidean_distance
from prototorch.core.initializers import (
LabelsInitializer,
ZerosCompInitializer,
)
from prototorch.core.pooling import stratified_min_pooling
from prototorch.nn.wrappers import LambdaLayer
class ProtoTorchBolt(pl.LightningModule):
"""All ProtoTorch models are ProtoTorch Bolts."""
def __init__(self, hparams, **kwargs):
super().__init__()
# Hyperparameters
self.save_hyperparameters(hparams)
# Default hparams
self.hparams.setdefault("lr", 0.01)
# Default config
self.optimizer = kwargs.get("optimizer", torch.optim.Adam)
self.lr_scheduler = kwargs.get("lr_scheduler", None)
self.lr_scheduler_kwargs = kwargs.get("lr_scheduler_kwargs", dict())
def configure_optimizers(self):
optimizer = self.optimizer(self.parameters(), lr=self.hparams["lr"])
if self.lr_scheduler is not None:
scheduler = self.lr_scheduler(optimizer,
**self.lr_scheduler_kwargs)
sch = {
"scheduler": scheduler,
"interval": "step",
} # called after each training step
return [optimizer], [sch]
else:
return optimizer
def reconfigure_optimizers(self):
if self.trainer:
self.trainer.strategy.setup_optimizers(self.trainer)
else:
logging.warning("No trainer to reconfigure optimizers!")
def __repr__(self):
surep = super().__repr__()
indented = "".join([f"\t{line}\n" for line in surep.splitlines()])
wrapped = f"ProtoTorch Bolt(\n{indented})"
return wrapped
class PrototypeModel(ProtoTorchBolt):
proto_layer: AbstractComponents
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
distance_fn = kwargs.get("distance_fn", euclidean_distance)
self.distance_layer = LambdaLayer(distance_fn)
@property
def num_prototypes(self):
return len(self.proto_layer.components)
@property
def prototypes(self):
return self.proto_layer.components.detach().cpu()
@property
def components(self):
"""Only an alias for the prototypes."""
return self.prototypes
def add_prototypes(self, *args, **kwargs):
self.proto_layer.add_components(*args, **kwargs)
self.hparams["distribution"] = self.proto_layer.distribution
self.reconfigure_optimizers()
def remove_prototypes(self, indices):
self.proto_layer.remove_components(indices)
self.hparams["distribution"] = self.proto_layer.distribution
self.reconfigure_optimizers()
class UnsupervisedPrototypeModel(PrototypeModel):
proto_layer: Components
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Layers
prototypes_initializer = kwargs.get("prototypes_initializer", None)
if prototypes_initializer is not None:
self.proto_layer = Components(
self.hparams["num_prototypes"],
initializer=prototypes_initializer,
)
def compute_distances(self, x):
protos = self.proto_layer().type_as(x)
distances = self.distance_layer(x, protos)
return distances
def forward(self, x):
distances = self.compute_distances(x)
return distances
class SupervisedPrototypeModel(PrototypeModel):
proto_layer: LabeledComponents
def __init__(self, hparams, skip_proto_layer=False, **kwargs):
super().__init__(hparams, **kwargs)
# Layers
distribution = hparams.get("distribution", None)
prototypes_initializer = kwargs.get("prototypes_initializer", None)
labels_initializer = kwargs.get("labels_initializer",
LabelsInitializer())
if not skip_proto_layer:
# when subclasses do not need a customized prototype layer
if prototypes_initializer is not None:
# when building a new model
self.proto_layer = LabeledComponents(
distribution=distribution,
components_initializer=prototypes_initializer,
labels_initializer=labels_initializer,
)
proto_shape = self.proto_layer.components.shape[1:]
self.hparams["initialized_proto_shape"] = proto_shape
else:
# when restoring a checkpointed model
self.proto_layer = LabeledComponents(
distribution=distribution,
components_initializer=ZerosCompInitializer(
self.hparams["initialized_proto_shape"]),
)
self.competition_layer = WTAC()
@property
def prototype_labels(self):
return self.proto_layer.labels.detach().cpu()
@property
def num_classes(self):
return self.proto_layer.num_classes
def compute_distances(self, x):
protos, _ = self.proto_layer()
distances = self.distance_layer(x, protos)
return distances
def forward(self, x):
distances = self.compute_distances(x)
_, plabels = self.proto_layer()
winning = stratified_min_pooling(distances, plabels)
y_pred = F.softmin(winning, dim=1)
return y_pred
def predict_from_distances(self, distances):
with torch.no_grad():
_, plabels = self.proto_layer()
y_pred = self.competition_layer(distances, plabels)
return y_pred
def predict(self, x):
with torch.no_grad():
distances = self.compute_distances(x)
y_pred = self.predict_from_distances(distances)
return y_pred
def log_acc(self, distances, targets, tag):
preds = self.predict_from_distances(distances)
accuracy = torchmetrics.functional.accuracy(preds.int(), targets.int())
# `.int()` because FloatTensors are assumed to be class probabilities
self.log(tag,
accuracy,
on_step=False,
on_epoch=True,
prog_bar=True,
logger=True)
def test_step(self, batch, batch_idx):
x, targets = batch
preds = self.predict(x)
accuracy = torchmetrics.functional.accuracy(preds.int(), targets.int())
self.log("test_acc", accuracy)
class ProtoTorchMixin(object):
"""All mixins are ProtoTorchMixins."""
class NonGradientMixin(ProtoTorchMixin):
"""Mixin for custom non-gradient optimization."""
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self.automatic_optimization = False
def training_step(self, train_batch, batch_idx, optimizer_idx=None):
raise NotImplementedError
class ImagePrototypesMixin(ProtoTorchMixin):
"""Mixin for models with image prototypes."""
proto_layer: Components
components: torch.Tensor
def on_train_batch_end(self, outputs, batch, batch_idx):
"""Constrain the components to the range [0, 1] by clamping after updates."""
self.proto_layer.components.data.clamp_(0.0, 1.0)
def get_prototype_grid(self, num_columns=2, return_channels_last=True):
from torchvision.utils import make_grid
grid = make_grid(self.components, nrow=num_columns)
if return_channels_last:
grid = grid.permute((1, 2, 0))
return grid.cpu()

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"""
Proto Y Architecture
Network architecture for Component based Learning.
"""
from __future__ import annotations
from dataclasses import asdict, dataclass
from typing import Any, Callable
import pytorch_lightning as pl
import torch
from torchmetrics import Metric
class Steps(enumerate):
TRAINING = "training"
VALIDATION = "validation"
TEST = "test"
PREDICT = "predict"
class BaseYArchitecture(pl.LightningModule):
@dataclass
class HyperParameters:
"""
Add all hyperparameters in the inherited class.
"""
...
# Fields
registered_metrics: dict[str, dict[type[Metric], Metric]] = {
Steps.TRAINING: {},
Steps.VALIDATION: {},
Steps.TEST: {},
}
registered_metric_callbacks: dict[str, dict[type[Metric],
set[Callable]]] = {
Steps.TRAINING: {},
Steps.VALIDATION: {},
Steps.TEST: {},
}
# Type Hints for Necessary Fields
components_layer: torch.nn.Module
def __init__(self, hparams) -> None:
if isinstance(hparams, dict):
self.save_hyperparameters(hparams)
# TODO: => Move into Component Child
del hparams["initialized_proto_shape"]
hparams = self.HyperParameters(**hparams)
else:
hparams_dict = asdict(hparams)
hparams_dict["component_initializer"] = None
self.save_hyperparameters(hparams_dict, )
super().__init__()
# Common Steps
self.init_components(hparams)
self.init_backbone(hparams)
self.init_comparison(hparams)
self.init_competition(hparams)
# Train Steps
self.init_loss(hparams)
# Inference Steps
self.init_inference(hparams)
# external API
def get_competition(self, batch, components):
'''
Returns the output of the competition layer.
'''
latent_batch, latent_components = self.backbone(batch, components)
# TODO: => Latent Hook
comparison_tensor = self.comparison(latent_batch, latent_components)
# TODO: => Comparison Hook
return comparison_tensor
def forward(self, batch):
'''
Returns the prediction.
'''
if isinstance(batch, torch.Tensor):
batch = (batch, None)
# TODO: manage different datatypes?
components = self.components_layer()
# TODO: => Component Hook
comparison_tensor = self.get_competition(batch, components)
# TODO: => Competition Hook
return self.inference(comparison_tensor, components)
def predict(self, batch):
"""
Alias for forward
"""
return self.forward(batch)
def forward_comparison(self, batch):
'''
Returns the Output of the comparison layer.
'''
if isinstance(batch, torch.Tensor):
batch = (batch, None)
# TODO: manage different datatypes?
components = self.components_layer()
# TODO: => Component Hook
return self.get_competition(batch, components)
def loss_forward(self, batch):
'''
Returns the output of the loss layer.
'''
# TODO: manage different datatypes?
components = self.components_layer()
# TODO: => Component Hook
comparison_tensor = self.get_competition(batch, components)
# TODO: => Competition Hook
return self.loss(comparison_tensor, batch, components)
# Empty Initialization
def init_components(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the components step.
"""
def init_backbone(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the backbone step.
"""
def init_comparison(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the comparison step.
"""
def init_competition(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the competition step.
"""
def init_loss(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the loss step.
"""
def init_inference(self, hparams: HyperParameters) -> None:
"""
All initialization necessary for the inference step.
"""
# Empty Steps
def components(self):
"""
This step has no input.
It returns the components.
"""
raise NotImplementedError(
"The components step has no reasonable default.")
def backbone(self, batch, components):
"""
The backbone step receives the data batch and the components.
It can transform both by an arbitrary function.
It returns the transformed batch and components,
each of the same length as the original input.
"""
return batch, components
def comparison(self, batch, components):
"""
Takes a batch of size N and the component set of size M.
It returns an NxMxD tensor containing D (usually 1) pairwise comparison measures.
"""
raise NotImplementedError(
"The comparison step has no reasonable default.")
def competition(self, comparison_measures, components):
"""
Takes the tensor of comparison measures.
Assigns a competition vector to each class.
"""
raise NotImplementedError(
"The competition step has no reasonable default.")
def loss(self, comparison_measures, batch, components):
"""
Takes the tensor of competition measures.
Calculates a single loss value
"""
raise NotImplementedError("The loss step has no reasonable default.")
def inference(self, comparison_measures, components):
"""
Takes the tensor of competition measures.
Returns the inferred vector.
"""
raise NotImplementedError(
"The inference step has no reasonable default.")
# Y Architecture Hooks
# internal API, called by models and callbacks
def register_torchmetric(
self,
name: Callable,
metric: type[Metric],
step: str = Steps.TRAINING,
**metric_kwargs,
):
'''
Register a callback for evaluating a torchmetric.
'''
if step == Steps.PREDICT:
raise ValueError("Prediction metrics are not supported.")
if metric not in self.registered_metrics:
self.registered_metrics[step][metric] = metric(**metric_kwargs)
self.registered_metric_callbacks[step][metric] = {name}
else:
self.registered_metric_callbacks[step][metric].add(name)
def update_metrics_step(self, batch, step):
# Prediction Metrics
preds = self(batch)
_, y = batch
for metric in self.registered_metrics[step]:
instance = self.registered_metrics[step][metric].to(self.device)
instance(y, preds.reshape(y.shape))
def update_metrics_epoch(self, step):
for metric in self.registered_metrics[step]:
instance = self.registered_metrics[step][metric].to(self.device)
value = instance.compute()
for callback in self.registered_metric_callbacks[step][metric]:
callback(value, self)
instance.reset()
# Lightning steps
# -------------------------------------------------------------------------
# >>>> Training
def training_step(self, batch, batch_idx, optimizer_idx=None):
self.update_metrics_step(batch, Steps.TRAINING)
return self.loss_forward(batch)
def training_epoch_end(self, outputs) -> None:
self.update_metrics_epoch(Steps.TRAINING)
# >>>> Validation
def validation_step(self, batch, batch_idx):
self.update_metrics_step(batch, Steps.VALIDATION)
return self.loss_forward(batch)
def validation_epoch_end(self, outputs) -> None:
self.update_metrics_epoch(Steps.VALIDATION)
# >>>> Test
def test_step(self, batch, batch_idx):
self.update_metrics_step(batch, Steps.TEST)
return self.loss_forward(batch)
def test_epoch_end(self, outputs) -> None:
self.update_metrics_epoch(Steps.TEST)
# >>>> Prediction
def predict_step(self, batch, batch_idx, dataloader_idx=0):
return self.predict(batch)
# Check points
def on_save_checkpoint(self, checkpoint: dict[str, Any]) -> None:
# Compatible with Lightning
checkpoint["hyper_parameters"] = {
'hparams': checkpoint["hyper_parameters"]
}
return super().on_save_checkpoint(checkpoint)

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from __future__ import annotations
from dataclasses import dataclass, field
from typing import Callable
import torch
from prototorch.core.distances import euclidean_distance
from prototorch.core.initializers import (
AbstractLinearTransformInitializer,
EyeLinearTransformInitializer,
)
from prototorch.models.architectures.base import BaseYArchitecture
from prototorch.nn.wrappers import LambdaLayer
from torch import Tensor
from torch.nn.parameter import Parameter
class SimpleComparisonMixin(BaseYArchitecture):
"""
Simple Comparison
A comparison layer that only uses the positions of the components
and the batch for dissimilarity computation.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(BaseYArchitecture.HyperParameters):
"""
comparison_fn: The comparison / dissimilarity function to use. Default: euclidean_distance.
comparison_args: Keyword arguments for the comparison function. Default: {}.
"""
comparison_fn: Callable = euclidean_distance
comparison_args: dict = field(default_factory=dict)
comparison_parameters: dict = field(default_factory=dict)
# Steps
# ----------------------------------------------------------------------------------------------
def init_comparison(self, hparams: HyperParameters):
self.comparison_layer = LambdaLayer(
fn=hparams.comparison_fn,
**hparams.comparison_args,
)
self.comparison_kwargs: dict[str, Tensor] = {}
def comparison(self, batch, components):
comp_tensor, _ = components
batch_tensor, _ = batch
comp_tensor = comp_tensor.unsqueeze(1)
distances = self.comparison_layer(
batch_tensor,
comp_tensor,
**self.comparison_kwargs,
)
return distances
class OmegaComparisonMixin(SimpleComparisonMixin):
"""
Omega Comparison
A comparison layer that uses the positions of the components
and the batch for dissimilarity computation.
"""
_omega: torch.Tensor
# HyperParameters
# ----------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(SimpleComparisonMixin.HyperParameters):
"""
input_dim: Necessary Field: The dimensionality of the input.
latent_dim:
The dimensionality of the latent space. Default: 2.
omega_initializer:
The initializer to use for the omega matrix. Default: EyeLinearTransformInitializer.
"""
input_dim: int | None = None
latent_dim: int = 2
omega_initializer: type[
AbstractLinearTransformInitializer] = EyeLinearTransformInitializer
omega_initializer_kwargs: dict = field(default_factory=dict)
# Steps
# ----------------------------------------------------------------------------------------------
def init_comparison(self, hparams: HyperParameters) -> None:
super().init_comparison(hparams)
# Initialize the omega matrix
if hparams.input_dim is None:
raise ValueError("input_dim must be specified.")
else:
omega = hparams.omega_initializer(
**hparams.omega_initializer_kwargs).generate(
hparams.input_dim,
hparams.latent_dim,
)
self.register_parameter("_omega", Parameter(omega))
self.comparison_kwargs = dict(omega=self._omega)
# Properties
# ----------------------------------------------------------------------------------------------
@property
def omega_matrix(self):
'''
Omega Matrix. Mapping applied to data and prototypes.
'''
return self._omega.detach().cpu()
@property
def lambda_matrix(self):
'''
Lambda Matrix.
'''
omega = self._omega.detach()
lam = omega @ omega.T
return lam.detach().cpu()
@property
def relevance_profile(self):
'''
Relevance Profile. Main Diagonal of the Lambda Matrix.
'''
return self.lambda_matrix.diag().abs()
@property
def classification_influence_profile(self):
'''
Classification Influence Profile. Influence of each dimension.
'''
lam = self.lambda_matrix
return lam.abs().sum(0)
@property
def parameter_omega(self):
return self._omega
@parameter_omega.setter
def parameter_omega(self, new_omega):
with torch.no_grad():
self._omega.data.copy_(new_omega)

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from dataclasses import dataclass
from prototorch.core.competitions import WTAC
from prototorch.models.architectures.base import BaseYArchitecture
class WTACompetitionMixin(BaseYArchitecture):
"""
Winner Take All Competition
A competition layer that uses the winner-take-all strategy.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(BaseYArchitecture.HyperParameters):
"""
No hyperparameters.
"""
# Steps
# ----------------------------------------------------------------------------------------------------
def init_inference(self, hparams: HyperParameters):
self.competition_layer = WTAC()
def inference(self, comparison_measures, components):
comp_labels = components[1]
return self.competition_layer(comparison_measures, comp_labels)

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from dataclasses import dataclass
from prototorch.core.components import LabeledComponents
from prototorch.core.initializers import (
AbstractComponentsInitializer,
LabelsInitializer,
ZerosCompInitializer,
)
from prototorch.models import BaseYArchitecture
class SupervisedArchitecture(BaseYArchitecture):
"""
Supervised Architecture
An architecture that uses labeled Components as component Layer.
"""
components_layer: LabeledComponents
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters:
"""
distribution: A valid prototype distribution. No default possible.
components_initializer: An implementation of AbstractComponentsInitializer. No default possible.
"""
distribution: "dict[str, int]"
component_initializer: AbstractComponentsInitializer
# Steps
# ----------------------------------------------------------------------------------------------------
def init_components(self, hparams: HyperParameters):
if hparams.component_initializer is not None:
self.components_layer = LabeledComponents(
distribution=hparams.distribution,
components_initializer=hparams.component_initializer,
labels_initializer=LabelsInitializer(),
)
proto_shape = self.components_layer.components.shape[1:]
self.hparams["initialized_proto_shape"] = proto_shape
else:
# when restoring a checkpointed model
self.components_layer = LabeledComponents(
distribution=hparams.distribution,
components_initializer=ZerosCompInitializer(
self.hparams["initialized_proto_shape"]),
)
# Properties
# ----------------------------------------------------------------------------------------------------
@property
def prototypes(self):
"""
Returns the position of the prototypes.
"""
return self.components_layer.components.detach().cpu()
@property
def prototype_labels(self):
"""
Returns the labels of the prototypes.
"""
return self.components_layer.labels.detach().cpu()

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from dataclasses import dataclass, field
from prototorch.core.losses import GLVQLoss
from prototorch.models.architectures.base import BaseYArchitecture
class GLVQLossMixin(BaseYArchitecture):
"""
GLVQ Loss
A loss layer that uses the Generalized Learning Vector Quantization (GLVQ) loss.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(BaseYArchitecture.HyperParameters):
"""
margin: The margin of the GLVQ loss. Default: 0.0.
transfer_fn: Transfer function to use. Default: sigmoid_beta.
transfer_args: Keyword arguments for the transfer function. Default: {beta: 10.0}.
"""
margin: float = 0.0
transfer_fn: str = "sigmoid_beta"
transfer_args: dict = field(default_factory=lambda: dict(beta=10.0))
# Steps
# ----------------------------------------------------------------------------------------------------
def init_loss(self, hparams: HyperParameters):
self.loss_layer = GLVQLoss(
margin=hparams.margin,
transfer_fn=hparams.transfer_fn,
**hparams.transfer_args,
)
def loss(self, comparison_measures, batch, components):
target = batch[1]
comp_labels = components[1]
loss = self.loss_layer(comparison_measures, target, comp_labels)
self.log('loss', loss)
return loss

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from dataclasses import dataclass, field
from typing import Type
import torch
from prototorch.models import BaseYArchitecture
from torch.nn.parameter import Parameter
class SingleLearningRateMixin(BaseYArchitecture):
"""
Single Learning Rate
All parameters are updated with a single learning rate.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(BaseYArchitecture.HyperParameters):
"""
lr: The learning rate. Default: 0.1.
optimizer: The optimizer to use. Default: torch.optim.Adam.
"""
lr: float = 0.1
optimizer: Type[torch.optim.Optimizer] = torch.optim.Adam
# Hooks
# ----------------------------------------------------------------------------------------------------
def configure_optimizers(self):
return self.hparams.optimizer(self.parameters(),
lr=self.hparams.lr) # type: ignore
class MultipleLearningRateMixin(BaseYArchitecture):
"""
Multiple Learning Rates
Define Different Learning Rates for different parameters.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(BaseYArchitecture.HyperParameters):
"""
lr: The learning rate. Default: 0.1.
optimizer: The optimizer to use. Default: torch.optim.Adam.
"""
lr: dict = field(default_factory=dict)
optimizer: Type[torch.optim.Optimizer] = torch.optim.Adam
# Hooks
# ----------------------------------------------------------------------------------------------------
def configure_optimizers(self):
optimizers = []
for name, lr in self.hparams.lr.items():
if not hasattr(self, name):
raise ValueError(f"{name} is not a parameter of {self}")
else:
model_part = getattr(self, name)
if isinstance(model_part, Parameter):
optimizers.append(
self.hparams.optimizer(
[model_part],
lr=lr, # type: ignore
))
elif hasattr(model_part, "parameters"):
optimizers.append(
self.hparams.optimizer(
model_part.parameters(),
lr=lr, # type: ignore
))
return optimizers

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@ -1,152 +1,307 @@
"""Lightning Callbacks."""
import logging
from typing import TYPE_CHECKING
import warnings
from enum import Enum
from typing import Optional, Type
import matplotlib.pyplot as plt
import numpy as np
import pytorch_lightning as pl
import torch
from prototorch.core.initializers import LiteralCompInitializer
import torchmetrics
from prototorch.models.architectures.base import BaseYArchitecture, Steps
from prototorch.models.architectures.comparison import OmegaComparisonMixin
from prototorch.models.library.gmlvq import GMLVQ
from prototorch.models.vis import Vis2DAbstract
from prototorch.utils.utils import mesh2d
from pytorch_lightning.loggers import TensorBoardLogger
from .extras import ConnectionTopology
if TYPE_CHECKING:
from prototorch.models import GLVQ, GrowingNeuralGas
DIVERGING_COLOR_MAPS = [
'PiYG',
'PRGn',
'BrBG',
'PuOr',
'RdGy',
'RdBu',
'RdYlBu',
'RdYlGn',
'Spectral',
'coolwarm',
'bwr',
'seismic',
]
class PruneLoserPrototypes(pl.Callback):
class LogTorchmetricCallback(pl.Callback):
def __init__(
self,
threshold=0.01,
idle_epochs=10,
prune_quota_per_epoch=-1,
frequency=1,
replace=False,
prototypes_initializer=None,
verbose=False,
):
self.threshold = threshold # minimum win ratio
self.idle_epochs = idle_epochs # epochs to wait before pruning
self.prune_quota_per_epoch = prune_quota_per_epoch
self.frequency = frequency
self.replace = replace
self.verbose = verbose
self.prototypes_initializer = prototypes_initializer
name,
metric: Type[torchmetrics.Metric],
step: str = Steps.TRAINING,
on_epoch=True,
**metric_kwargs,
) -> None:
self.name = name
self.metric = metric
self.metric_kwargs = metric_kwargs
self.step = step
self.on_epoch = on_epoch
def on_train_epoch_end(self, trainer, pl_module: "GLVQ"):
if (trainer.current_epoch + 1) < self.idle_epochs:
return None
if (trainer.current_epoch + 1) % self.frequency:
return None
ratios = pl_module.prototype_win_ratios.mean(dim=0)
to_prune = torch.arange(len(ratios))[ratios < self.threshold]
to_prune = to_prune.tolist()
prune_labels = pl_module.prototype_labels[to_prune]
if self.prune_quota_per_epoch > 0:
to_prune = to_prune[:self.prune_quota_per_epoch]
prune_labels = prune_labels[:self.prune_quota_per_epoch]
if len(to_prune) > 0:
logging.debug(f"\nPrototype win ratios: {ratios}")
logging.debug(f"Pruning prototypes at: {to_prune}")
logging.debug(f"Corresponding labels are: {prune_labels.tolist()}")
cur_num_protos = pl_module.num_prototypes
pl_module.remove_prototypes(indices=to_prune)
if self.replace:
labels, counts = torch.unique(prune_labels,
sorted=True,
return_counts=True)
distribution = dict(zip(labels.tolist(), counts.tolist()))
logging.info(f"Re-adding pruned prototypes...")
logging.debug(f"distribution={distribution}")
pl_module.add_prototypes(
distribution=distribution,
components_initializer=self.prototypes_initializer)
new_num_protos = pl_module.num_prototypes
logging.info(f"`num_prototypes` changed from {cur_num_protos} "
f"to {new_num_protos}.")
return True
class PrototypeConvergence(pl.Callback):
def __init__(self, min_delta=0.01, idle_epochs=10, verbose=False):
self.min_delta = min_delta
self.idle_epochs = idle_epochs # epochs to wait
self.verbose = verbose
def on_train_epoch_end(self, trainer, pl_module):
if (trainer.current_epoch + 1) < self.idle_epochs:
return None
logging.info("Stopping...")
# TODO
return True
class GNGCallback(pl.Callback):
"""GNG Callback.
Applies growing algorithm based on accumulated error and topology.
Based on "A Growing Neural Gas Network Learns Topologies" by Bernd Fritzke.
"""
def __init__(self, reduction=0.1, freq=10):
self.reduction = reduction
self.freq = freq
def on_train_epoch_end(
def setup(
self,
trainer: pl.Trainer,
pl_module: "GrowingNeuralGas",
):
if (trainer.current_epoch + 1) % self.freq == 0:
# Get information
errors = pl_module.errors
topology: ConnectionTopology = pl_module.topology_layer
components = pl_module.proto_layer.components
# Insertion point
worst = torch.argmax(errors)
neighbors = topology.get_neighbors(worst)[0]
if len(neighbors) == 0:
logging.log(level=20, msg="No neighbor-pairs found!")
return
neighbors_errors = errors[neighbors]
worst_neighbor = neighbors[torch.argmax(neighbors_errors)]
# New Prototype
new_component = 0.5 * (components[worst] +
components[worst_neighbor])
# Add component
pl_module.proto_layer.add_components(
1,
initializer=LiteralCompInitializer(new_component.unsqueeze(0)),
pl_module: BaseYArchitecture,
stage: Optional[str] = None,
) -> None:
pl_module.register_torchmetric(
self,
self.metric,
step=self.step,
**self.metric_kwargs,
)
# Adjust Topology
topology.add_prototype()
topology.add_connection(worst, -1)
topology.add_connection(worst_neighbor, -1)
topology.remove_connection(worst, worst_neighbor)
def __call__(self, value, pl_module: BaseYArchitecture):
pl_module.log(
self.name,
value,
on_epoch=self.on_epoch,
on_step=(not self.on_epoch),
)
# New errors
worst_error = errors[worst].unsqueeze(0)
pl_module.errors = torch.cat([pl_module.errors, worst_error])
pl_module.errors[worst] = errors[worst] * self.reduction
pl_module.errors[
worst_neighbor] = errors[worst_neighbor] * self.reduction
trainer.strategy.setup_optimizers(trainer)
class LogConfusionMatrix(LogTorchmetricCallback):
def __init__(
self,
num_classes,
name="confusion",
on='prediction',
**kwargs,
):
super().__init__(
name,
torchmetrics.ConfusionMatrix,
on=on,
num_classes=num_classes,
**kwargs,
)
def __call__(self, value, pl_module: BaseYArchitecture):
fig, ax = plt.subplots()
ax.imshow(value.detach().cpu().numpy())
# Show all ticks and label them with the respective list entries
# ax.set_xticks(np.arange(len(farmers)), labels=farmers)
# ax.set_yticks(np.arange(len(vegetables)), labels=vegetables)
# Rotate the tick labels and set their alignment.
plt.setp(
ax.get_xticklabels(),
rotation=45,
ha="right",
rotation_mode="anchor",
)
# Loop over data dimensions and create text annotations.
for i in range(len(value)):
for j in range(len(value)):
text = ax.text(
j,
i,
value[i, j].item(),
ha="center",
va="center",
color="w",
)
ax.set_title(self.name)
fig.tight_layout()
pl_module.logger.experiment.add_figure(
tag=self.name,
figure=fig,
close=True,
global_step=pl_module.global_step,
)
class VisGLVQ2D(Vis2DAbstract):
def visualize(self, pl_module):
protos = pl_module.prototypes
plabels = pl_module.prototype_labels
x_train, y_train = self.x_train, self.y_train
ax = self.setup_ax()
self.plot_protos(ax, protos, plabels)
if x_train is not None:
self.plot_data(ax, x_train, y_train)
mesh_input, xx, yy = mesh2d(
np.vstack([x_train, protos]),
self.border,
self.resolution,
)
else:
mesh_input, xx, yy = mesh2d(protos, self.border, self.resolution)
_components = pl_module.components_layer.components
mesh_input = torch.from_numpy(mesh_input).type_as(_components)
y_pred = pl_module.predict(mesh_input)
y_pred = y_pred.cpu().reshape(xx.shape)
ax.contourf(xx, yy, y_pred, cmap=self.cmap, alpha=0.35)
class VisGMLVQ2D(Vis2DAbstract):
def __init__(self, *args, ev_proj=True, **kwargs):
super().__init__(*args, **kwargs)
self.ev_proj = ev_proj
def visualize(self, pl_module):
protos = pl_module.prototypes
plabels = pl_module.prototype_labels
x_train, y_train = self.x_train, self.y_train
device = pl_module.device
omega = pl_module._omega.detach()
lam = omega @ omega.T
u, _, _ = torch.pca_lowrank(lam, q=2)
with torch.no_grad():
x_train = torch.Tensor(x_train).to(device)
x_train = x_train @ u
x_train = x_train.cpu().detach()
if self.show_protos:
with torch.no_grad():
protos = torch.Tensor(protos).to(device)
protos = protos @ u
protos = protos.cpu().detach()
ax = self.setup_ax()
self.plot_data(ax, x_train, y_train)
if self.show_protos:
self.plot_protos(ax, protos, plabels)
class PlotLambdaMatrixToTensorboard(pl.Callback):
def __init__(self, cmap='seismic') -> None:
super().__init__()
self.cmap = cmap
if self.cmap not in DIVERGING_COLOR_MAPS and type(self.cmap) is str:
warnings.warn(
f"{self.cmap} is not a diverging color map. We recommend to use one of the following: {DIVERGING_COLOR_MAPS}"
)
def on_train_start(self, trainer, pl_module: GMLVQ):
self.plot_lambda(trainer, pl_module)
def on_train_epoch_end(self, trainer, pl_module: GMLVQ):
self.plot_lambda(trainer, pl_module)
def plot_lambda(self, trainer, pl_module: GMLVQ):
self.fig, self.ax = plt.subplots(1, 1)
# plot lambda matrix
l_matrix = pl_module.lambda_matrix
# normalize lambda matrix
l_matrix = l_matrix / torch.max(torch.abs(l_matrix))
# plot lambda matrix
self.ax.imshow(l_matrix.detach().numpy(), self.cmap, vmin=-1, vmax=1)
self.fig.colorbar(self.ax.images[-1])
# add title
self.ax.set_title('Lambda Matrix')
# add to tensorboard
if isinstance(trainer.logger, TensorBoardLogger):
trainer.logger.experiment.add_figure(
"lambda_matrix",
self.fig,
trainer.global_step,
)
else:
warnings.warn(
f"{self.__class__.__name__} is not compatible with {trainer.logger.__class__.__name__} as logger. Use TensorBoardLogger instead."
)
class Profiles(Enum):
'''
Available Profiles
'''
RELEVANCE = 'relevance'
INFLUENCE = 'influence'
def __str__(self):
return str(self.value)
class PlotMatrixProfiles(pl.Callback):
def __init__(self, profile=Profiles.INFLUENCE, cmap='seismic') -> None:
super().__init__()
self.cmap = cmap
self.profile = profile
def on_train_start(self, trainer, pl_module: GMLVQ):
'''
Plot initial profile.
'''
self._plot_profile(trainer, pl_module)
def on_train_epoch_end(self, trainer, pl_module: GMLVQ):
'''
Plot after every epoch.
'''
self._plot_profile(trainer, pl_module)
def _plot_profile(self, trainer, pl_module: GMLVQ):
fig, ax = plt.subplots(1, 1)
# plot lambda matrix
l_matrix = torch.abs(pl_module.lambda_matrix)
if self.profile == Profiles.RELEVANCE:
profile_value = l_matrix.diag()
elif self.profile == Profiles.INFLUENCE:
profile_value = l_matrix.sum(0)
# plot lambda matrix
ax.plot(profile_value.detach().numpy())
# add title
ax.set_title(f'{self.profile} profile')
# add to tensorboard
if isinstance(trainer.logger, TensorBoardLogger):
trainer.logger.experiment.add_figure(
f"{self.profile}_matrix",
fig,
trainer.global_step,
)
else:
class_name = self.__class__.__name__
logger_name = trainer.logger.__class__.__name__
warnings.warn(
f"{class_name} is not compatible with {logger_name} as logger. Use TensorBoardLogger instead."
)
class OmegaTraceNormalization(pl.Callback):
'''
Trace normalization of the Omega Matrix.
'''
__epsilon = torch.finfo(torch.float32).eps
def on_train_epoch_end(self, trainer: "pl.Trainer",
pl_module: OmegaComparisonMixin) -> None:
omega = pl_module.parameter_omega
denominator = torch.sqrt(torch.trace(omega.T @ omega))
logging.debug(
"Apply Omega Trace Normalization: demoninator=%f",
denominator.item(),
)
pl_module.parameter_omega = omega / (denominator + self.__epsilon)

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@ -1,78 +0,0 @@
import torch
import torchmetrics
from prototorch.core.competitions import CBCC
from prototorch.core.components import ReasoningComponents
from prototorch.core.initializers import RandomReasoningsInitializer
from prototorch.core.losses import MarginLoss
from prototorch.core.similarities import euclidean_similarity
from prototorch.nn.wrappers import LambdaLayer
from .abstract import ImagePrototypesMixin
from .glvq import SiameseGLVQ
class CBC(SiameseGLVQ):
"""Classification-By-Components."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, skip_proto_layer=True, **kwargs)
similarity_fn = kwargs.get("similarity_fn", euclidean_similarity)
components_initializer = kwargs.get("components_initializer", None)
reasonings_initializer = kwargs.get("reasonings_initializer",
RandomReasoningsInitializer())
self.components_layer = ReasoningComponents(
self.hparams.distribution,
components_initializer=components_initializer,
reasonings_initializer=reasonings_initializer,
)
self.similarity_layer = LambdaLayer(similarity_fn)
self.competition_layer = CBCC()
# Namespace hook
self.proto_layer = self.components_layer
self.loss = MarginLoss(self.hparams.margin)
def forward(self, x):
components, reasonings = self.components_layer()
latent_x = self.backbone(x)
self.backbone.requires_grad_(self.both_path_gradients)
latent_components = self.backbone(components)
self.backbone.requires_grad_(True)
detections = self.similarity_layer(latent_x, latent_components)
probs = self.competition_layer(detections, reasonings)
return probs
def shared_step(self, batch, batch_idx, optimizer_idx=None):
x, y = batch
y_pred = self(x)
num_classes = self.num_classes
y_true = torch.nn.functional.one_hot(y.long(), num_classes=num_classes)
loss = self.loss(y_pred, y_true).mean()
return y_pred, loss
def training_step(self, batch, batch_idx, optimizer_idx=None):
y_pred, train_loss = self.shared_step(batch, batch_idx, optimizer_idx)
preds = torch.argmax(y_pred, dim=1)
accuracy = torchmetrics.functional.accuracy(preds.int(),
batch[1].int())
self.log("train_acc",
accuracy,
on_step=False,
on_epoch=True,
prog_bar=True,
logger=True)
return train_loss
def predict(self, x):
with torch.no_grad():
y_pred = self(x)
y_pred = torch.argmax(y_pred, dim=1)
return y_pred
class ImageCBC(ImagePrototypesMixin, CBC):
"""CBC model that constrains the components to the range [0, 1] by
clamping after updates.
"""

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@ -1,130 +0,0 @@
"""prototorch.models.extras
Modules not yet available in prototorch go here temporarily.
"""
import torch
from prototorch.core.similarities import gaussian
def rank_scaled_gaussian(distances, lambd):
order = torch.argsort(distances, dim=1)
ranks = torch.argsort(order, dim=1)
return torch.exp(-torch.exp(-ranks / lambd) * distances)
def orthogonalization(tensors):
"""Orthogonalization via polar decomposition """
u, _, v = torch.svd(tensors, compute_uv=True)
u_shape = tuple(list(u.shape))
v_shape = tuple(list(v.shape))
# reshape to (num x N x M)
u = torch.reshape(u, (-1, u_shape[-2], u_shape[-1]))
v = torch.reshape(v, (-1, v_shape[-2], v_shape[-1]))
out = u @ v.permute([0, 2, 1])
out = torch.reshape(out, u_shape[:-1] + (v_shape[-2], ))
return out
def ltangent_distance(x, y, omegas):
r"""Localized Tangent distance.
Compute Orthogonal Complement: math:`\bm P_k = \bm I - \Omega_k \Omega_k^T`
Compute Tangent Distance: math:`{\| \bm P \bm x - \bm P_k \bm y_k \|}_2`
:param `torch.tensor` omegas: Three dimensional matrix
:rtype: `torch.tensor`
"""
x, y = [arr.view(arr.size(0), -1) for arr in (x, y)]
p = torch.eye(omegas.shape[-2], device=omegas.device) - torch.bmm(
omegas, omegas.permute([0, 2, 1]))
projected_x = x @ p
projected_y = torch.diagonal(y @ p).T
expanded_y = torch.unsqueeze(projected_y, dim=1)
batchwise_difference = expanded_y - projected_x
differences_squared = batchwise_difference**2
distances = torch.sqrt(torch.sum(differences_squared, dim=2))
distances = distances.permute(1, 0)
return distances
class GaussianPrior(torch.nn.Module):
def __init__(self, variance):
super().__init__()
self.variance = variance
def forward(self, distances):
return gaussian(distances, self.variance)
class RankScaledGaussianPrior(torch.nn.Module):
def __init__(self, lambd):
super().__init__()
self.lambd = lambd
def forward(self, distances):
return rank_scaled_gaussian(distances, self.lambd)
class ConnectionTopology(torch.nn.Module):
def __init__(self, agelimit, num_prototypes):
super().__init__()
self.agelimit = agelimit
self.num_prototypes = num_prototypes
self.cmat = torch.zeros((self.num_prototypes, self.num_prototypes))
self.age = torch.zeros_like(self.cmat)
def forward(self, d):
order = torch.argsort(d, dim=1)
for element in order:
i0, i1 = element[0], element[1]
self.cmat[i0][i1] = 1
self.cmat[i1][i0] = 1
self.age[i0][i1] = 0
self.age[i1][i0] = 0
self.age[i0][self.cmat[i0] == 1] += 1
self.age[i1][self.cmat[i1] == 1] += 1
self.cmat[i0][self.age[i0] > self.agelimit] = 0
self.cmat[i1][self.age[i1] > self.agelimit] = 0
def get_neighbors(self, position):
return torch.where(self.cmat[position])
def add_prototype(self):
new_cmat = torch.zeros([dim + 1 for dim in self.cmat.shape])
new_cmat[:-1, :-1] = self.cmat
self.cmat = new_cmat
new_age = torch.zeros([dim + 1 for dim in self.age.shape])
new_age[:-1, :-1] = self.age
self.age = new_age
def add_connection(self, a, b):
self.cmat[a][b] = 1
self.cmat[b][a] = 1
self.age[a][b] = 0
self.age[b][a] = 0
def remove_connection(self, a, b):
self.cmat[a][b] = 0
self.cmat[b][a] = 0
self.age[a][b] = 0
self.age[b][a] = 0
def extra_repr(self):
return f"(agelimit): ({self.agelimit})"

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@ -1,404 +0,0 @@
"""Models based on the GLVQ framework."""
import torch
from prototorch.core.competitions import wtac
from prototorch.core.distances import (
lomega_distance,
omega_distance,
squared_euclidean_distance,
)
from prototorch.core.initializers import EyeLinearTransformInitializer
from prototorch.core.losses import (
GLVQLoss,
lvq1_loss,
lvq21_loss,
)
from prototorch.core.transforms import LinearTransform
from prototorch.nn.wrappers import LambdaLayer, LossLayer
from torch.nn.parameter import Parameter
from .abstract import ImagePrototypesMixin, SupervisedPrototypeModel
from .extras import ltangent_distance, orthogonalization
class GLVQ(SupervisedPrototypeModel):
"""Generalized Learning Vector Quantization."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Default hparams
self.hparams.setdefault("margin", 0.0)
self.hparams.setdefault("transfer_fn", "identity")
self.hparams.setdefault("transfer_beta", 10.0)
# Loss
self.loss = GLVQLoss(
margin=self.hparams["margin"],
transfer_fn=self.hparams["transfer_fn"],
beta=self.hparams["transfer_beta"],
)
# def on_save_checkpoint(self, checkpoint):
# if "prototype_win_ratios" in checkpoint["state_dict"]:
# del checkpoint["state_dict"]["prototype_win_ratios"]
def initialize_prototype_win_ratios(self):
self.register_buffer(
"prototype_win_ratios",
torch.zeros(self.num_prototypes, device=self.device))
def on_train_epoch_start(self):
self.initialize_prototype_win_ratios()
def log_prototype_win_ratios(self, distances):
batch_size = len(distances)
prototype_wc = torch.zeros(self.num_prototypes,
dtype=torch.long,
device=self.device)
wi, wc = torch.unique(distances.min(dim=-1).indices,
sorted=True,
return_counts=True)
prototype_wc[wi] = wc
prototype_wr = prototype_wc / batch_size
self.prototype_win_ratios = torch.vstack([
self.prototype_win_ratios,
prototype_wr,
])
def shared_step(self, batch, batch_idx, optimizer_idx=None):
x, y = batch
out = self.compute_distances(x)
_, plabels = self.proto_layer()
loss = self.loss(out, y, plabels)
return out, loss
def training_step(self, batch, batch_idx, optimizer_idx=None):
out, train_loss = self.shared_step(batch, batch_idx, optimizer_idx)
self.log_prototype_win_ratios(out)
self.log("train_loss", train_loss)
self.log_acc(out, batch[-1], tag="train_acc")
return train_loss
def validation_step(self, batch, batch_idx):
# `model.eval()` and `torch.no_grad()` handled by pl
out, val_loss = self.shared_step(batch, batch_idx)
self.log("val_loss", val_loss)
self.log_acc(out, batch[-1], tag="val_acc")
return val_loss
def test_step(self, batch, batch_idx):
# `model.eval()` and `torch.no_grad()` handled by pl
out, test_loss = self.shared_step(batch, batch_idx)
self.log_acc(out, batch[-1], tag="test_acc")
return test_loss
def test_epoch_end(self, outputs):
test_loss = 0.0
for batch_loss in outputs:
test_loss += batch_loss.item()
self.log("test_loss", test_loss)
# TODO
# def predict_step(self, batch, batch_idx, dataloader_idx=None):
# pass
class SiameseGLVQ(GLVQ):
"""GLVQ in a Siamese setting.
GLVQ model that applies an arbitrary transformation on the inputs and the
prototypes before computing the distances between them. The weights in the
transformation pipeline are only learned from the inputs.
"""
def __init__(self,
hparams,
backbone=torch.nn.Identity(),
both_path_gradients=False,
**kwargs):
distance_fn = kwargs.pop("distance_fn", squared_euclidean_distance)
super().__init__(hparams, distance_fn=distance_fn, **kwargs)
self.backbone = backbone
self.both_path_gradients = both_path_gradients
def configure_optimizers(self):
proto_opt = self.optimizer(self.proto_layer.parameters(),
lr=self.hparams["proto_lr"])
# Only add a backbone optimizer if backbone has trainable parameters
bb_params = list(self.backbone.parameters())
if (bb_params):
bb_opt = self.optimizer(bb_params, lr=self.hparams["bb_lr"])
optimizers = [proto_opt, bb_opt]
else:
optimizers = [proto_opt]
if self.lr_scheduler is not None:
schedulers = []
for optimizer in optimizers:
scheduler = self.lr_scheduler(optimizer,
**self.lr_scheduler_kwargs)
schedulers.append(scheduler)
return optimizers, schedulers
else:
return optimizers
def compute_distances(self, x):
protos, _ = self.proto_layer()
x, protos = [arr.view(arr.size(0), -1) for arr in (x, protos)]
latent_x = self.backbone(x)
bb_grad = any([el.requires_grad for el in self.backbone.parameters()])
self.backbone.requires_grad_(bb_grad and self.both_path_gradients)
latent_protos = self.backbone(protos)
self.backbone.requires_grad_(bb_grad)
distances = self.distance_layer(latent_x, latent_protos)
return distances
def predict_latent(self, x, map_protos=True):
"""Predict `x` assuming it is already embedded in the latent space.
Only the prototypes are embedded in the latent space using the
backbone.
"""
self.eval()
with torch.no_grad():
protos, plabels = self.proto_layer()
if map_protos:
protos = self.backbone(protos)
d = self.distance_layer(x, protos)
y_pred = wtac(d, plabels)
return y_pred
class LVQMLN(SiameseGLVQ):
"""Learning Vector Quantization Multi-Layer Network.
GLVQ model that applies an arbitrary transformation on the inputs, BUT NOT
on the prototypes before computing the distances between them. This of
course, means that the prototypes no longer live the input space, but
rather in the embedding space.
"""
def compute_distances(self, x):
latent_protos, _ = self.proto_layer()
latent_x = self.backbone(x)
distances = self.distance_layer(latent_x, latent_protos)
return distances
class GRLVQ(SiameseGLVQ):
"""Generalized Relevance Learning Vector Quantization.
Implemented as a Siamese network with a linear transformation backbone.
TODO Make a RelevanceLayer. `bb_lr` is ignored otherwise.
"""
_relevances: torch.Tensor
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Additional parameters
relevances = torch.ones(self.hparams["input_dim"], device=self.device)
self.register_parameter("_relevances", Parameter(relevances))
# Override the backbone
self.backbone = LambdaLayer(lambda x: x @ torch.diag(self._relevances),
name="relevance scaling")
@property
def relevance_profile(self):
return self._relevances.detach().cpu()
def extra_repr(self):
return f"(relevances): (shape: {tuple(self._relevances.shape)})"
class SiameseGMLVQ(SiameseGLVQ):
"""Generalized Matrix Learning Vector Quantization.
Implemented as a Siamese network with a linear transformation backbone.
"""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Override the backbone
omega_initializer = kwargs.get("omega_initializer",
EyeLinearTransformInitializer())
self.backbone = LinearTransform(
self.hparams["input_dim"],
self.hparams["latent_dim"],
initializer=omega_initializer,
)
@property
def omega_matrix(self):
return self.backbone.weights
@property
def lambda_matrix(self):
omega = self.backbone.weights # (input_dim, latent_dim)
lam = omega @ omega.T
return lam.detach().cpu()
class GMLVQ(GLVQ):
"""Generalized Matrix Learning Vector Quantization.
Implemented as a regular GLVQ network that simply uses a different distance
function. This makes it easier to implement a localized variant.
"""
# Parameters
_omega: torch.Tensor
def __init__(self, hparams, **kwargs):
distance_fn = kwargs.pop("distance_fn", omega_distance)
super().__init__(hparams, distance_fn=distance_fn, **kwargs)
# Additional parameters
omega_initializer = kwargs.get("omega_initializer",
EyeLinearTransformInitializer())
omega = omega_initializer.generate(self.hparams["input_dim"],
self.hparams["latent_dim"])
self.register_parameter("_omega", Parameter(omega))
self.backbone = LambdaLayer(lambda x: x @ self._omega,
name="omega matrix")
@property
def omega_matrix(self):
return self._omega.detach().cpu()
@property
def lambda_matrix(self):
omega = self._omega.detach() # (input_dim, latent_dim)
lam = omega @ omega.T
return lam.detach().cpu()
def compute_distances(self, x):
protos, _ = self.proto_layer()
distances = self.distance_layer(x, protos, self._omega)
return distances
def extra_repr(self):
return f"(omega): (shape: {tuple(self._omega.shape)})"
class LGMLVQ(GMLVQ):
"""Localized and Generalized Matrix Learning Vector Quantization."""
def __init__(self, hparams, **kwargs):
distance_fn = kwargs.pop("distance_fn", lomega_distance)
super().__init__(hparams, distance_fn=distance_fn, **kwargs)
# Re-register `_omega` to override the one from the super class.
omega = torch.randn(
self.num_prototypes,
self.hparams["input_dim"],
self.hparams["latent_dim"],
device=self.device,
)
self.register_parameter("_omega", Parameter(omega))
class GTLVQ(LGMLVQ):
"""Localized and Generalized Tangent Learning Vector Quantization."""
def __init__(self, hparams, **kwargs):
distance_fn = kwargs.pop("distance_fn", ltangent_distance)
super().__init__(hparams, distance_fn=distance_fn, **kwargs)
omega_initializer = kwargs.get("omega_initializer")
if omega_initializer is not None:
subspace = omega_initializer.generate(
self.hparams["input_dim"],
self.hparams["latent_dim"],
)
omega = torch.repeat_interleave(
subspace.unsqueeze(0),
self.num_prototypes,
dim=0,
)
else:
omega = torch.rand(
self.num_prototypes,
self.hparams["input_dim"],
self.hparams["latent_dim"],
device=self.device,
)
# Re-register `_omega` to override the one from the super class.
self.register_parameter("_omega", Parameter(omega))
def on_train_batch_end(self, outputs, batch, batch_idx):
with torch.no_grad():
self._omega.copy_(orthogonalization(self._omega))
class SiameseGTLVQ(SiameseGLVQ, GTLVQ):
"""Generalized Tangent Learning Vector Quantization.
Implemented as a Siamese network with a linear transformation backbone.
"""
class GLVQ1(GLVQ):
"""Generalized Learning Vector Quantization 1."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
self.loss = LossLayer(lvq1_loss)
self.optimizer = torch.optim.SGD
class GLVQ21(GLVQ):
"""Generalized Learning Vector Quantization 2.1."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
self.loss = LossLayer(lvq21_loss)
self.optimizer = torch.optim.SGD
class ImageGLVQ(ImagePrototypesMixin, GLVQ):
"""GLVQ for training on image data.
GLVQ model that constrains the prototypes to the range [0, 1] by clamping
after updates.
"""
class ImageGMLVQ(ImagePrototypesMixin, GMLVQ):
"""GMLVQ for training on image data.
GMLVQ model that constrains the prototypes to the range [0, 1] by clamping
after updates.
"""
class ImageGTLVQ(ImagePrototypesMixin, GTLVQ):
"""GTLVQ for training on image data.
GTLVQ model that constrains the prototypes to the range [0, 1] by clamping
after updates.
"""
def on_train_batch_end(self, outputs, batch, batch_idx):
"""Constrain the components to the range [0, 1] by clamping after updates."""
self.proto_layer.components.data.clamp_(0.0, 1.0)
with torch.no_grad():
self._omega.copy_(orthogonalization(self._omega))

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@ -1,45 +0,0 @@
"""ProtoTorch KNN model."""
import warnings
from prototorch.core.competitions import KNNC
from prototorch.core.components import LabeledComponents
from prototorch.core.initializers import (
LiteralCompInitializer,
LiteralLabelsInitializer,
)
from prototorch.utils.utils import parse_data_arg
from .abstract import SupervisedPrototypeModel
class KNN(SupervisedPrototypeModel):
"""K-Nearest-Neighbors classification algorithm."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, skip_proto_layer=True, **kwargs)
# Default hparams
self.hparams.setdefault("k", 1)
data = kwargs.get("data", None)
if data is None:
raise ValueError("KNN requires data, but was not provided!")
data, targets = parse_data_arg(data)
# Layers
self.proto_layer = LabeledComponents(
distribution=len(data) * [1],
components_initializer=LiteralCompInitializer(data),
labels_initializer=LiteralLabelsInitializer(targets))
self.competition_layer = KNNC(k=self.hparams.k)
def training_step(self, train_batch, batch_idx, optimizer_idx=None):
return 1 # skip training step
def on_train_batch_start(self, train_batch, batch_idx):
warnings.warn("k-NN has no training, skipping!")
return -1
def configure_optimizers(self):
return None

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@ -0,0 +1,7 @@
from .glvq import GLVQ
from .gmlvq import GMLVQ
__all__ = [
"GLVQ",
"GMLVQ",
]

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@ -0,0 +1,35 @@
from dataclasses import dataclass
from prototorch.models import (
SimpleComparisonMixin,
SingleLearningRateMixin,
SupervisedArchitecture,
WTACompetitionMixin,
)
from prototorch.models.architectures.loss import GLVQLossMixin
class GLVQ(
SupervisedArchitecture,
SimpleComparisonMixin,
GLVQLossMixin,
WTACompetitionMixin,
SingleLearningRateMixin,
):
"""
Generalized Learning Vector Quantization (GLVQ)
A GLVQ architecture that uses the winner-take-all strategy and the GLVQ loss.
"""
@dataclass
class HyperParameters(
SimpleComparisonMixin.HyperParameters,
SingleLearningRateMixin.HyperParameters,
GLVQLossMixin.HyperParameters,
WTACompetitionMixin.HyperParameters,
SupervisedArchitecture.HyperParameters,
):
"""
No hyperparameters.
"""

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@ -0,0 +1,50 @@
from __future__ import annotations
from dataclasses import dataclass, field
from typing import Callable
import torch
from prototorch.core.distances import omega_distance
from prototorch.models import (
GLVQLossMixin,
MultipleLearningRateMixin,
OmegaComparisonMixin,
SupervisedArchitecture,
WTACompetitionMixin,
)
class GMLVQ(
SupervisedArchitecture,
OmegaComparisonMixin,
GLVQLossMixin,
WTACompetitionMixin,
MultipleLearningRateMixin,
):
"""
Generalized Matrix Learning Vector Quantization (GMLVQ)
A GMLVQ architecture that uses the winner-take-all strategy and the GLVQ loss.
"""
# HyperParameters
# ----------------------------------------------------------------------------------------------------
@dataclass
class HyperParameters(
MultipleLearningRateMixin.HyperParameters,
OmegaComparisonMixin.HyperParameters,
GLVQLossMixin.HyperParameters,
WTACompetitionMixin.HyperParameters,
SupervisedArchitecture.HyperParameters,
):
"""
comparison_fn: The comparison / dissimilarity function to use. Override Default: omega_distance.
comparison_args: Keyword arguments for the comparison function. Override Default: {}.
"""
comparison_fn: Callable = omega_distance
comparison_args: dict = field(default_factory=dict)
optimizer: type[torch.optim.Optimizer] = torch.optim.Adam
lr: dict = field(default_factory=lambda: dict(
components_layer=0.1,
_omega=0.5,
))

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@ -1,128 +0,0 @@
"""LVQ models that are optimized using non-gradient methods."""
import logging
from prototorch.core.losses import _get_dp_dm
from prototorch.nn.activations import get_activation
from prototorch.nn.wrappers import LambdaLayer
from .abstract import NonGradientMixin
from .glvq import GLVQ
class LVQ1(NonGradientMixin, GLVQ):
"""Learning Vector Quantization 1."""
def training_step(self, train_batch, batch_idx, optimizer_idx=None):
protos, plables = self.proto_layer()
x, y = train_batch
dis = self.compute_distances(x)
# TODO Vectorized implementation
for xi, yi in zip(x, y):
d = self.compute_distances(xi.view(1, -1))
preds = self.competition_layer(d, plabels)
w = d.argmin(1)
if yi == preds:
shift = xi - protos[w]
else:
shift = protos[w] - xi
updated_protos = protos + 0.0
updated_protos[w] = protos[w] + (self.hparams.lr * shift)
self.proto_layer.load_state_dict({"_components": updated_protos},
strict=False)
logging.debug(f"dis={dis}")
logging.debug(f"y={y}")
# Logging
self.log_acc(dis, y, tag="train_acc")
return None
class LVQ21(NonGradientMixin, GLVQ):
"""Learning Vector Quantization 2.1."""
def training_step(self, train_batch, batch_idx, optimizer_idx=None):
protos, plabels = self.proto_layer()
x, y = train_batch
dis = self.compute_distances(x)
# TODO Vectorized implementation
for xi, yi in zip(x, y):
xi = xi.view(1, -1)
yi = yi.view(1, )
d = self.compute_distances(xi)
(_, wp), (_, wn) = _get_dp_dm(d, yi, plabels, with_indices=True)
shiftp = xi - protos[wp]
shiftn = protos[wn] - xi
updated_protos = protos + 0.0
updated_protos[wp] = protos[wp] + (self.hparams.lr * shiftp)
updated_protos[wn] = protos[wn] + (self.hparams.lr * shiftn)
self.proto_layer.load_state_dict({"_components": updated_protos},
strict=False)
# Logging
self.log_acc(dis, y, tag="train_acc")
return None
class MedianLVQ(NonGradientMixin, GLVQ):
"""Median LVQ
# TODO Avoid computing distances over and over
"""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
self.transfer_layer = LambdaLayer(
get_activation(self.hparams.transfer_fn))
def _f(self, x, y, protos, plabels):
d = self.distance_layer(x, protos)
dp, dm = _get_dp_dm(d, y, plabels)
mu = (dp - dm) / (dp + dm)
invmu = -1.0 * mu
f = self.transfer_layer(invmu, beta=self.hparams.transfer_beta) + 1.0
return f
def expectation(self, x, y, protos, plabels):
f = self._f(x, y, protos, plabels)
gamma = f / f.sum()
return gamma
def lower_bound(self, x, y, protos, plabels, gamma):
f = self._f(x, y, protos, plabels)
lower_bound = (gamma * f.log()).sum()
return lower_bound
def training_step(self, train_batch, batch_idx, optimizer_idx=None):
protos, plabels = self.proto_layer()
x, y = train_batch
dis = self.compute_distances(x)
for i, _ in enumerate(protos):
# Expectation step
gamma = self.expectation(x, y, protos, plabels)
lower_bound = self.lower_bound(x, y, protos, plabels, gamma)
# Maximization step
_protos = protos + 0
for k, xk in enumerate(x):
_protos[i] = xk
_lower_bound = self.lower_bound(x, y, _protos, plabels, gamma)
if _lower_bound > lower_bound:
logging.debug(f"Updating prototype {i} to data {k}...")
self.proto_layer.load_state_dict({"_components": _protos},
strict=False)
break
# Logging
self.log_acc(dis, y, tag="train_acc")
return None

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@ -1,131 +0,0 @@
"""Probabilistic GLVQ methods"""
import torch
from prototorch.core.losses import nllr_loss, rslvq_loss
from prototorch.core.pooling import (
stratified_min_pooling,
stratified_sum_pooling,
)
from prototorch.nn.wrappers import LossLayer
from .extras import GaussianPrior, RankScaledGaussianPrior
from .glvq import GLVQ, SiameseGMLVQ
class CELVQ(GLVQ):
"""Cross-Entropy Learning Vector Quantization."""
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Loss
self.loss = torch.nn.CrossEntropyLoss()
def shared_step(self, batch, batch_idx, optimizer_idx=None):
x, y = batch
out = self.compute_distances(x) # [None, num_protos]
_, plabels = self.proto_layer()
winning = stratified_min_pooling(out, plabels) # [None, num_classes]
probs = -1.0 * winning
batch_loss = self.loss(probs, y.long())
loss = batch_loss.sum()
return out, loss
class ProbabilisticLVQ(GLVQ):
def __init__(self, hparams, rejection_confidence=0.0, **kwargs):
super().__init__(hparams, **kwargs)
self.rejection_confidence = rejection_confidence
self._conditional_distribution = None
def forward(self, x):
distances = self.compute_distances(x)
conditional = self.conditional_distribution(distances)
prior = (1. / self.num_prototypes) * torch.ones(self.num_prototypes,
device=self.device)
posterior = conditional * prior
plabels = self.proto_layer._labels
if isinstance(plabels, torch.LongTensor) or isinstance(
plabels, torch.cuda.LongTensor): # type: ignore
y_pred = stratified_sum_pooling(posterior, plabels) # type: ignore
else:
raise ValueError("Labels must be LongTensor.")
return y_pred
def predict(self, x):
y_pred = self.forward(x)
confidence, prediction = torch.max(y_pred, dim=1)
prediction[confidence < self.rejection_confidence] = -1
return prediction
def training_step(self, batch, batch_idx, optimizer_idx=None):
x, y = batch
out = self.forward(x)
_, plabels = self.proto_layer()
batch_loss = self.loss(out, y, plabels)
loss = batch_loss.sum()
return loss
def conditional_distribution(self, distances):
"""Conditional distribution of distances."""
if self._conditional_distribution is None:
raise ValueError("Conditional distribution is not set.")
return self._conditional_distribution(distances)
class SLVQ(ProbabilisticLVQ):
"""Soft Learning Vector Quantization."""
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# Default hparams
self.hparams.setdefault("variance", 1.0)
variance = self.hparams.get("variance")
self._conditional_distribution = GaussianPrior(variance)
self.loss = LossLayer(nllr_loss)
class RSLVQ(ProbabilisticLVQ):
"""Robust Soft Learning Vector Quantization."""
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# Default hparams
self.hparams.setdefault("variance", 1.0)
variance = self.hparams.get("variance")
self._conditional_distribution = GaussianPrior(variance)
self.loss = LossLayer(rslvq_loss)
class PLVQ(ProbabilisticLVQ, SiameseGMLVQ):
"""Probabilistic Learning Vector Quantization.
TODO: Use Backbone LVQ instead
"""
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# Default hparams
self.hparams.setdefault("lambda", 1.0)
lam = self.hparams.get("lambda", 1.0)
self.conditional_distribution = RankScaledGaussianPrior(lam)
self.loss = torch.nn.KLDivLoss()
# FIXME
# def training_step(self, batch, batch_idx, optimizer_idx=None):
# x, y = batch
# y_pred = self(x)
# batch_loss = self.loss(y_pred, y)
# loss = batch_loss.sum()
# return loss

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@ -1,154 +0,0 @@
"""Unsupervised prototype learning algorithms."""
import numpy as np
import torch
from prototorch.core.competitions import wtac
from prototorch.core.distances import squared_euclidean_distance
from prototorch.core.losses import NeuralGasEnergy
from .abstract import NonGradientMixin, UnsupervisedPrototypeModel
from .callbacks import GNGCallback
from .extras import ConnectionTopology
class KohonenSOM(NonGradientMixin, UnsupervisedPrototypeModel):
"""Kohonen Self-Organizing-Map.
TODO Allow non-2D grids
"""
_grid: torch.Tensor
def __init__(self, hparams, **kwargs):
h, w = hparams.get("shape")
# Ignore `num_prototypes`
hparams["num_prototypes"] = h * w
distance_fn = kwargs.pop("distance_fn", squared_euclidean_distance)
super().__init__(hparams, distance_fn=distance_fn, **kwargs)
# Hyperparameters
self.save_hyperparameters(hparams)
# Default hparams
self.hparams.setdefault("alpha", 0.3)
self.hparams.setdefault("sigma", max(h, w) / 2.0)
# Additional parameters
x, y = torch.arange(h), torch.arange(w)
grid = torch.stack(torch.meshgrid(x, y, indexing="ij"), dim=-1)
self.register_buffer("_grid", grid)
self._sigma = self.hparams.sigma
self._lr = self.hparams.lr
def predict_from_distances(self, distances):
grid = self._grid.view(-1, 2)
wp = wtac(distances, grid)
return wp
def training_step(self, train_batch, batch_idx):
# x = train_batch
# TODO Check if the batch has labels
x = train_batch[0]
d = self.compute_distances(x)
wp = self.predict_from_distances(d)
grid = self._grid.view(-1, 2)
gd = squared_euclidean_distance(wp, grid)
nh = torch.exp(-gd / self._sigma**2)
protos = self.proto_layer()
diff = x.unsqueeze(dim=1) - protos
delta = self._lr * self.hparams.alpha * nh.unsqueeze(-1) * diff
updated_protos = protos + delta.sum(dim=0)
self.proto_layer.load_state_dict(
{"_components": updated_protos},
strict=False,
)
def training_epoch_end(self, training_step_outputs):
self._sigma = self.hparams.sigma * np.exp(
-self.current_epoch / self.trainer.max_epochs)
def extra_repr(self):
return f"(grid): (shape: {tuple(self._grid.shape)})"
class HeskesSOM(UnsupervisedPrototypeModel):
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
def training_step(self, train_batch, batch_idx):
# TODO Implement me!
raise NotImplementedError()
class NeuralGas(UnsupervisedPrototypeModel):
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Hyperparameters
self.save_hyperparameters(hparams)
# Default hparams
self.hparams.setdefault("age_limit", 10)
self.hparams.setdefault("lm", 1)
self.energy_layer = NeuralGasEnergy(lm=self.hparams["lm"])
self.topology_layer = ConnectionTopology(
agelimit=self.hparams["age_limit"],
num_prototypes=self.hparams["num_prototypes"],
)
def training_step(self, train_batch, batch_idx):
# x = train_batch
# TODO Check if the batch has labels
x = train_batch[0]
d = self.compute_distances(x)
loss, _ = self.energy_layer(d)
self.topology_layer(d)
self.log("loss", loss)
return loss
class GrowingNeuralGas(NeuralGas):
errors: torch.Tensor
def __init__(self, hparams, **kwargs):
super().__init__(hparams, **kwargs)
# Defaults
self.hparams.setdefault("step_reduction", 0.5)
self.hparams.setdefault("insert_reduction", 0.1)
self.hparams.setdefault("insert_freq", 10)
errors = torch.zeros(
self.hparams["num_prototypes"],
device=self.device,
)
self.register_buffer("errors", errors)
def training_step(self, train_batch, _batch_idx):
# x = train_batch
# TODO Check if the batch has labels
x = train_batch[0]
d = self.compute_distances(x)
loss, order = self.energy_layer(d)
winner = order[:, 0]
mask = torch.zeros_like(d)
mask[torch.arange(len(mask)), winner] = 1.0
dp = d * mask
self.errors += torch.sum(dp * dp)
self.errors *= self.hparams["step_reduction"]
self.topology_layer(d)
self.log("loss", loss)
return loss
def configure_callbacks(self):
return [
GNGCallback(
reduction=self.hparams["insert_reduction"],
freq=self.hparams["insert_freq"],
)
]

View File

@ -10,6 +10,8 @@
ProtoTorch models Plugin Package
"""
from pathlib import Path
from pkg_resources import safe_name
from setuptools import find_namespace_packages, setup
@ -18,8 +20,7 @@ PLUGIN_NAME = "models"
PROJECT_URL = "https://github.com/si-cim/prototorch_models"
DOWNLOAD_URL = "https://github.com/si-cim/prototorch_models.git"
with open("README.md", "r") as fh:
long_description = fh.read()
long_description = Path("README.md").read_text(encoding='utf8')
INSTALL_REQUIRES = [
"prototorch>=0.7.3",
@ -55,7 +56,7 @@ ALL = CLI + DEV + DOCS + EXAMPLES + TESTS
setup(
name=safe_name("prototorch_" + PLUGIN_NAME),
version="0.5.2",
version="1.0.0-a8",
description="Pre-packaged prototype-based "
"machine learning models using ProtoTorch and PyTorch-Lightning.",
long_description=long_description,

View File

@ -1,195 +1,13 @@
"""prototorch.models test suite."""
import prototorch as pt
import pytest
import torch
from prototorch.models.library import GLVQ
def test_glvq_model_build():
model = pt.models.GLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
hparams = GLVQ.HyperParameters(
distribution=dict(num_classes=2, per_class=1),
component_initializer=pt.initializers.RNCI(2),
)
def test_glvq1_model_build():
model = pt.models.GLVQ1(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_glvq21_model_build():
model = pt.models.GLVQ1(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_gmlvq_model_build():
model = pt.models.GMLVQ(
{
"distribution": (3, 2),
"input_dim": 2,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_grlvq_model_build():
model = pt.models.GRLVQ(
{
"distribution": (3, 2),
"input_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_gtlvq_model_build():
model = pt.models.GTLVQ(
{
"distribution": (3, 2),
"input_dim": 4,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_lgmlvq_model_build():
model = pt.models.LGMLVQ(
{
"distribution": (3, 2),
"input_dim": 4,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_image_glvq_model_build():
model = pt.models.ImageGLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(16),
)
def test_image_gmlvq_model_build():
model = pt.models.ImageGMLVQ(
{
"distribution": (3, 2),
"input_dim": 16,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(16),
)
def test_image_gtlvq_model_build():
model = pt.models.ImageGMLVQ(
{
"distribution": (3, 2),
"input_dim": 16,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(16),
)
def test_siamese_glvq_model_build():
model = pt.models.SiameseGLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(4),
)
def test_siamese_gmlvq_model_build():
model = pt.models.SiameseGMLVQ(
{
"distribution": (3, 2),
"input_dim": 4,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(4),
)
def test_siamese_gtlvq_model_build():
model = pt.models.SiameseGTLVQ(
{
"distribution": (3, 2),
"input_dim": 4,
"latent_dim": 2,
},
prototypes_initializer=pt.initializers.RNCI(4),
)
def test_knn_model_build():
train_ds = pt.datasets.Iris(dims=[0, 2])
model = pt.models.KNN(dict(k=3), data=train_ds)
def test_lvq1_model_build():
model = pt.models.LVQ1(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_lvq21_model_build():
model = pt.models.LVQ21(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_median_lvq_model_build():
model = pt.models.MedianLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_celvq_model_build():
model = pt.models.CELVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_rslvq_model_build():
model = pt.models.RSLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_slvq_model_build():
model = pt.models.SLVQ(
{"distribution": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_growing_neural_gas_model_build():
model = pt.models.GrowingNeuralGas(
{"num_prototypes": 5},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_kohonen_som_model_build():
model = pt.models.KohonenSOM(
{"shape": (3, 2)},
prototypes_initializer=pt.initializers.RNCI(2),
)
def test_neural_gas_model_build():
model = pt.models.NeuralGas(
{"num_prototypes": 5},
prototypes_initializer=pt.initializers.RNCI(2),
)
model = GLVQ(hparams=hparams)