Compare neural networks by their feature similarity

Overview

PyTorch Model Compare

A tiny package to compare two neural networks in PyTorch. There are many ways to compare two neural networks, but one robust and scalable way is using the Centered Kernel Alignment (CKA) metric, where the features of the networks are compared.

Centered Kernel Alignment

Centered Kernel Alignment (CKA) is a representation similarity metric that is widely used for understanding the representations learned by neural networks. Specifically, CKA takes two feature maps / representations X and Y as input and computes their normalized similarity (in terms of the Hilbert-Schmidt Independence Criterion (HSIC)) as

CKA original version

Where K and L are similarity matrices of X and Y respectively. However, the above formula is not scalable against deep architectures and large datasets. Therefore, a minibatch version can be constructed that uses an unbiased estimator of the HSIC as

alt text

alt text

The above form of CKA is from the 2021 ICLR paper by Nguyen T., Raghu M, Kornblith S.

Getting Started

Installation

pip install torch_cka

Usage

from torch_cka import CKA
model1 = resnet18(pretrained=True)  # Or any neural network of your choice
model2 = resnet34(pretrained=True)

dataloader = DataLoader(your_dataset, 
                        batch_size=batch_size, # according to your device memory
                        shuffle=False)  # Don't forget to seed your dataloader

cka = CKA(model1, model2,
          model1_name="ResNet18",   # good idea to provide names to avoid confusion
          model2_name="ResNet34",   
          model1_layers=layer_names_resnet18, # List of layers to extract features from
          model2_layers=layer_names_resnet34, # extracts all layer features by default
          device='cuda')

cka.compare(dataloader) # secondary dataloader is optional

results = cka.export()  # returns a dict that contains model names, layer names
                        # and the CKA matrix

Examples

torch_cka can be used with any pytorch model (subclass of nn.Module) and can be used with pretrained models available from popular sources like torchHub, timm, huggingface etc. Some examples of where this package can come in handy are illustrated below.

Comparing the effect of Depth

A simple experiment is to analyse the features learned by two architectures of the same family - ResNets but of different depths. Taking two ResNets - ResNet18 and ResNet34 - pre-trained on the Imagenet dataset, we can analyse how they produce their features on, say CIFAR10 for simplicity. This comparison is shown as a heatmap below.

alt text

We see high degree of similarity between the two models in lower layers as they both learn similar representations from the data. However at higher layers, the similarity reduces as the deeper model (ResNet34) learn higher order features which the is elusive to the shallower model (ResNet18). Yet, they do indeed have certain similarity in their last fc layer which acts as the feature classifier.

Comparing Two Similar Architectures

Another way of using CKA is in ablation studies. We can go further than those ablation studies that only focus on resultant performance and employ CKA to study the internal representations. Case in point - ResNet50 and WideResNet50 (k=2). WideResNet50 has the same architecture as ResNet50 except having wider residual bottleneck layers (by a factor of 2 in this case).

alt text

We clearly notice that the learned features are indeed different after the first few layers. The width has a more pronounced effect in deeper layers as compared to the earlier layers as both networks seem to learn similar features in the initial layers.

As a bonus, here is a comparison between ViT and the latest SOTA model Swin Transformer pretrained on ImageNet22k.

alt text

Comparing quite different architectures

CNNs have been analysed a lot over the past decade since AlexNet. We somewhat know what sort of features they learn across their layers (through visualizations) and we have put them to good use. One interesting approach is to compare these understandable features with newer models that don't permit easy visualizations (like recent vision transformer architectures) and study them. This has indeed been a hot research topic (see Raghu et.al 2021).

alt text

Comparing Datasets

Yet another application is to compare two datasets - preferably two versions of the data. This is especially useful in production where data drift is a known issue. If you have an updated version of a dataset, you can study how your model will perform on it by comparing the representations of the datasets. This can be more telling about actual performance than simply comparing the datasets directly.

This can also be quite useful in studying the performance of a model on downstream tasks and fine-tuning. For instance, if the CKA score is high for some features on different datasets, then those can be frozen during fine-tuning. As an example, the following figure compares the features of a pretrained Resnet50 on the Imagenet test data and the VOC dataset. Clearly, the pretrained features have little correlation with the VOC dataset. Therefore, we have to resort to fine-tuning to get at least satisfactory results.

alt text

Tips

  • If your model is large (lots of layers or large feature maps), try to extract from select layers. This is to avoid out of memory issues.
  • If you still want to compare the entire feature map, you can run it multiple times with few layers at each iteration and export your data using cka.export(). The exported data can then be concatenated to produce the full CKA matrix.
  • Give proper model names to avoid confusion when interpreting the results. The code automatically extracts the model name for you by default, but it is good practice to label the models according to your use case.
  • When providing your dataloader(s) to the compare() function, it is important that they are seeded properly for reproducibility.
  • When comparing datasets, be sure to set drop_last=True when building the dataloader. This resolves shape mismatch issues - especially in differently sized datasets.

Citation

If you use this repo in your project or research, please cite as -

@software{subramanian2021torch_cka,
    author={Anand Subramanian},
    title={torch_cka},
    url={https://github.com/AntixK/PyTorch-Model-Compare},
    year={2021}
}
Owner
Anand Krishnamoorthy
Research Engineer
Anand Krishnamoorthy
classify fashion-mnist dataset with pytorch

Fashion-Mnist Classifier with PyTorch Inference 1- clone this repository: git clone https://github.com/Jhamed7/Fashion-Mnist-Classifier.git 2- Instal

1 Jan 14, 2022
Real-time Joint Semantic Reasoning for Autonomous Driving

MultiNet MultiNet is able to jointly perform road segmentation, car detection and street classification. The model achieves real-time speed and state-

Marvin Teichmann 518 Dec 12, 2022
The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction".

LEAR The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction". **The code is in the "master

杨攀 93 Jan 07, 2023
Project to create an open-source 6 DoF input device

6DInputs A Project to create open-source 3D printed 6 DoF input devices Note the plural ('6DInputs' and 'devices') in the headings. We would like seve

RepRap Ltd 47 Jul 28, 2022
Consensus score for tripadvisor

ContripScore ContripScore is essentially a score that combines an Internet platform rating and a consensus rating from sentiment analysis (For instanc

Pepe 1 Jan 13, 2022
LiDAR R-CNN: An Efficient and Universal 3D Object Detector

LiDAR R-CNN: An Efficient and Universal 3D Object Detector Introduction This is the official code of LiDAR R-CNN: An Efficient and Universal 3D Object

TuSimple 295 Jan 05, 2023
Discord Multi Tool that focuses on design and easy usage

Multi-Tool-v1.0 Discord Multi Tool that focuses on design and easy usage Delete webhook Block all friends Spam webhook Modify webhook Webhook info Tok

Lodi#0001 24 May 23, 2022
RGB-stacking 🛑 🟩 🔷 for robotic manipulation

RGB-stacking 🛑 🟩 🔷 for robotic manipulation BLOG | PAPER | VIDEO Beyond Pick-and-Place: Tackling Robotic Stacking of Diverse Shapes, Alex X. Lee*,

DeepMind 95 Dec 23, 2022
[WWW 2021] Source code for "Graph Contrastive Learning with Adaptive Augmentation"

GCA Source code for Graph Contrastive Learning with Adaptive Augmentation (WWW 2021) For example, to run GCA-Degree under WikiCS, execute: python trai

Big Data and Multi-modal Computing Group, CRIPAC 97 Jan 07, 2023
A PoC Corporation Relationship Knowledge Graph System on top of Nebula Graph.

Corp-Rel is a PoC of Corpartion Relationship Knowledge Graph System. It's built on top of the Open Source Graph Database: Nebula Graph with a dataset

Wey Gu 20 Dec 11, 2022
ReferFormer - Official Implementation of ReferFormer

The official implementation of the paper: Language as Queries for Referring Video Object Segmentation Language as Queries for Referring Video Object S

Jonas Wu 232 Dec 29, 2022
PyTorch implementation of MICCAI 2018 paper "Liver Lesion Detection from Weakly-labeled Multi-phase CT Volumes with a Grouped Single Shot MultiBox Detector"

Grouped SSD (GSSD) for liver lesion detection from multi-phase CT Note: the MICCAI 2018 paper only covers the multi-phase lesion detection part of thi

Sang-gil Lee 36 Oct 12, 2022
tmm_fast is a lightweight package to speed up optical planar multilayer thin-film device computation.

tmm_fast tmm_fast or transfer-matrix-method_fast is a lightweight package to speed up optical planar multilayer thin-film device computation. It is es

26 Dec 11, 2022
Code release for "BoxeR: Box-Attention for 2D and 3D Transformers"

BoxeR By Duy-Kien Nguyen, Jihong Ju, Olaf Booij, Martin R. Oswald, Cees Snoek. This repository is an official implementation of the paper BoxeR: Box-A

Nguyen Duy Kien 111 Dec 07, 2022
TLXZoo - Pre-trained models based on TensorLayerX

Pre-trained models based on TensorLayerX. TensorLayerX is a multi-backend AI fra

TensorLayer Community 13 Dec 07, 2022
tensorflow code for inverse face rendering

InverseFaceRender This is tensorflow code for our project: Learning Inverse Rendering of Faces from Real-world Videos. (https://arxiv.org/abs/2003.120

Yuda Qiu 18 Nov 16, 2022
Label-Free Model Evaluation with Semi-Structured Dataset Representations

Label-Free Model Evaluation with Semi-Structured Dataset Representations Prerequisites This code uses the following libraries Python 3.7 NumPy PyTorch

8 Oct 06, 2022
Faster Convex Lipschitz Regression

Faster Convex Lipschitz Regression This reepository provides a python implementation of our Faster Convex Lipschitz Regression algorithm with GPU and

Ali Siahkamari 0 Nov 19, 2021
Generating retro pixel game characters with Generative Adversarial Networks. Dataset "TinyHero" included.

pixel_character_generator Generating retro pixel game characters with Generative Adversarial Networks. Dataset "TinyHero" included. Dataset TinyHero D

Agnieszka Mikołajczyk 88 Nov 17, 2022
Codes for AAAI22 paper "Learning to Solve Travelling Salesman Problem with Hardness-Adaptive Curriculum"

Paper For more details, please see our paper Learning to Solve Travelling Salesman Problem with Hardness-Adaptive Curriculum which has been accepted a

14 Sep 30, 2022