Code accompanying the paper on "An Empirical Investigation of Domain Generalization with Empirical Risk Minimizers" published at NeurIPS, 2021

Overview

Code for "An Empirical Investigation of Domian Generalization with Empirical Risk Minimizers" (NeurIPS 2021)

Motivation and Introduction

Domain Generalization is a task in machine learning where given a shift in the input data distribution, one is expected to perform well on a test task with a different input data distribution. For example, one might train a digit classifier on MNIST data and ask the model to generalize to predict digits that are rotated by say 30 degrees.

While many approaches have been proposed for this problem, we were intrigued by the results on the DomainBed benchmark which suggested that using the simple, empirical risk minimization (ERM) with a proper hyperparameter sweep leads to performance close to state of the art on Domain Generalization Problems.

What governs the generalization of a trained deep learning model using ERM to a given data distribution? This is the question we seek to answer in our NeurIPS 2021 paper:

An Empirical Investigation of Domain Generalization with Empirical Risk Minimizers. Rama Vedantam, David Lopez-Paz*, David Schwab*.

NeurIPS 2021 (*=Equal Contribution)

This repository contains code used for producing the results in our paper.

Initial Setup

  1. Run source init.sh to install all the dependencies for the project. This will also initialize DomainBed as a submodule for the project

  2. Set requisite paths in setup.sh, and run source setup.sh

Computing Generalization Measures

  • Get set up with the DomainBed codebase and launch a sweep for an initial set of trained models (illustrated below for rotated MNIST dataset):
cd DomainBed/

python -m domainbed.scripts.sweep launch\
       --data_dir=${DOMAINBED_DATA} \
       --output_dir=${DOMAINBED_RUN_DIR}/sweep_fifty_fifty \
       --algorithms=ERM \
       --holdout_fraction=0.5\
       --datasets=RotatedMNIST \
       --n_hparams=1\
       --command_launcher submitit

After this step, we have a set of trained models that we can now look to evaluate and measure. Note that unlike the original domainbed paper we holdout a larger fraction (50%) of the data for evaluation of the measures.

  • Once the sweep finishes, aggregate the different files for use by the domianbed_measures codebase:
python domainbed_measures/write_job_status_file.py \
                --sweep_dir=${DOMAINBED_RUN_DIR}/sweep_fifty_fifty \
                --output_txt="domainbed_measures/scratch/sweep_release.txt"
  • Once this step is complete, we can compute various generalization measures and store them to disk for future analysis using:
SLURM_PARTITION="TO_BE_SET"
python domainbed_measures/compute_gen_correlations.py \
	--algorithm=ERM \
    --job_done_file="domainbed_measures/scratch/sweep_release.txt" \
    --run_dir=${MEASURE_RUN_DIR} \
    --all_measures_one_job \
	--slurm_partition=${SLURM_PARTITION}

Where we utilize slurm on a compute cluster to scale the experiments to thousands of models. If you do not have access to such a cluster with multiple GPUs to parallelize the computation, use --slurm_partition="" above and the code will run on a single GPU (although the results might take a long time to compute!).

  • Finally, once the above code is done, use the following code snippet to aggregate the values of the different generalization measures:
python domainbed_measures/extract_generalization_features.py \
    --run_dir=${MEASURE_RUN_DIR} \
    --sweep_name="_out_ERM_RotatedMNIST"

This step yeilds .csv files where each row corresponds to a given trained model. Each row overall has the following format:

dataset | test_envs | measure 1 | measure 2 | measure 3 | target_err

where:

  • test_envs specifies which environments the model is tested on or equivalently trained on, since the remaining environments are used for training
  • target_err specifies the target error value for regression
  • measure 1 specifies the which measure is being computed, e.g. sharpness or fisher eigen value based measures

In case of the file named, for example, sweeps__out_ERM_RotatedMNIST_canon_False_ood.csv, the validation error within domain wd_out_domain_err is also used as one of the measures and target_err is the out of domain generalization error, and all measures are computed on a held-out set of image inputs from the target domain (for more details see the paper).

Alternatively, in case of the file named, sweeps__out_ERM_RotatedMNIST_canon_False_wd.csv, the target_err is the validation accuracy in domain, and all the measures are computed on the in-distribution held-out images.

  • Using this file one can do a number of interesting regression analyses as reported in the paper for measuring generalization.

For example, to generate the kind of results in Table. 1 of the paper in the joint setting, run the following command options:

python domainbed_measures/analyze_results.py \
    --input_csv="${MEASURE_RUN_DIR}/sweeps__out_ERM_RotatedMNIST_canon_False_ood.csv"\
    --stratified_or_joint="joint"\
    --num_features=2 \
    --fix_one_feature_to_wd

Alternatively, to generate results in the stratified setting, run:

python domainbed_measures/analyze_results.py \
    --input_csv="${MEASURE_RUN_DIR}/sweeps__out_ERM_RotatedMNIST_canon_False_ood.csv"\
    --stratified_or_joint="stratified"\
    --num_features=2 \
    --fix_one_feature_to_wd

Finally, to generate results using a single feature (Alone setting in Table. 1), run:

python domainbed_measures/analyze_results.py \
    --input_csv="${MEASURE_RUN_DIR}/sweeps__out_ERM_RotatedMNIST_canon_False_ood.csv"\
    --num_features=1

Translation of measures from the code to the paper

The following table illustrates all the measures in the paper (Appendix Table. 2) and how they are referred to in the codebase:

Measure Name Code Reference
H-divergence c2st
H-divergence + Source Error c2st_perr
H-divergence MS c2st_per_env
H-divergence MS + Source Error c2st_per_env_perr
H-divergence (train) c2st_train
H-divergence (train) + Source Error c2st_train_perr
H-divergence (train) MS c2st_train_per_env
Entropy-Source or Entropy entropy
Entropy-Target entropy_held_out
Fisher-Eigval-Diff fisher_eigval_sum_diff_ex_75
Fisher-Eigval fisher_eigval_sum_ex_75
Fisher-Align or Fisher (main paper) fisher_eigvec_align_ex_75
HΔH-divergence SS hdh
HΔH-divergence SS + Source Error hdh_perr
HΔH-divergence MS hdh_per_env
HΔH-divergence MS + Source Error hdh_per_env_perr
HΔH-divergence (train) SS hdh_train
HΔH-divergence (train) SS + Source Error hdh_train_perr
Jacobian jacobian_norm
Jacobian Ratio jacobian_norm_relative
Jacobian Diff jacobian_norm_relative_diff
Jacobian Log Ratio jacobian_norm_relative_log_diff
Mixup mixup
Mixup Ratio mixup_relative
Mixup Diff mixup_relative_diff
Mixup Log Ratio mixup_relative_log_diff
MMD-Gaussian mmd_gaussian
MMD-Mean-Cov mmd_mean_cov
L2-Path-Norm. path_norm
Sharpness sharp_mag
H+-divergence SS v_plus_c2st
H+-divergence SS + Source Error v_plus_c2st_perr
H+-divergence MS v_plus_c2st_per_env
H+-divergence MS + Source Error v_plus_c2st_per_env_perr
H+ΔH+-divergence SS v_plus_hdh
H+ΔH+-divergence SS + Source Error v_plus_hdh_perr
H+ΔH+-divergence MS v_plus_hdh_per_env
H+ΔH+-divergence MS + Source Error v_plus_hdh_per_env_perr
Source Error wd_out_domain_err

Acknowledgments

We thank the developers of Decodable Information Bottleneck, Domain Bed and Jonathan Frankle for code we found useful for this project.

License

This source code is released under the Creative Commons Attribution-NonCommercial 4.0 International license, included here.

Owner
Meta Research
Meta Research
Artificial Intelligence playing minesweeper 🤖

AI playing Minesweeper ✨ Minesweeper is a single-player puzzle video game. The objective of the game is to clear a rectangular board containing hidden

Vaibhaw 8 Oct 17, 2022
Visual dialog agents with pre-trained vision-and-language encoders.

Learning Better Visual Dialog Agents with Pretrained Visual-Linguistic Representation Or READ-UP: Referring Expression Agent Dialog with Unified Pretr

7 Oct 08, 2022
Impelmentation for paper Feature Generation and Hypothesis Verification for Reliable Face Anti-Spoofing

FGHV Impelmentation for paper Feature Generation and Hypothesis Verification for Reliable Face Anti-Spoofing Requirements Python 3.6 Pytorch 1.5.0 Cud

5 Jun 02, 2022
A Kernel fuzzer focusing on race bugs

Razzer: Finding kernel race bugs through fuzzing Environment setup $ source scripts/envsetup.sh scripts/envsetup.sh sets up necessary environment var

Systems and Software Security Lab at Seoul National University (SNU) 328 Dec 26, 2022
TensorFlow implementation of "Learning from Simulated and Unsupervised Images through Adversarial Training"

Simulated+Unsupervised (S+U) Learning in TensorFlow TensorFlow implementation of Learning from Simulated and Unsupervised Images through Adversarial T

Taehoon Kim 569 Dec 29, 2022
TransMIL: Transformer based Correlated Multiple Instance Learning for Whole Slide Image Classification

TransMIL: Transformer based Correlated Multiple Instance Learning for Whole Slide Image Classification [NeurIPS 2021] Abstract Multiple instance learn

132 Dec 30, 2022
The original weights of some Caffe models, ported to PyTorch.

pytorch-caffe-models This repo contains the original weights of some Caffe models, ported to PyTorch. Currently there are: GoogLeNet (Going Deeper wit

Katherine Crowson 9 Nov 04, 2022
This repo includes our code for evaluating and improving transferability in domain generalization (NeurIPS 2021)

Transferability for domain generalization This repo is for evaluating and improving transferability in domain generalization (NeurIPS 2021), based on

gordon 9 Nov 29, 2022
Supervised 3D Pre-training on Large-scale 2D Natural Image Datasets for 3D Medical Image Analysis

Introduction This is an implementation of our paper Supervised 3D Pre-training on Large-scale 2D Natural Image Datasets for 3D Medical Image Analysis.

24 Dec 06, 2022
Code for Quantifying Ignorance in Individual-Level Causal-Effect Estimates under Hidden Confounding

🍐 quince Code for Quantifying Ignorance in Individual-Level Causal-Effect Estimates under Hidden Confounding 🍐 Installation $ git clone

Andrew Jesson 19 Jun 23, 2022
A graphical Semi-automatic annotation tool based on labelImg and Yolov5

💕YOLOV5 semi-automatic annotation tool (Based on labelImg)

EricFang 247 Jan 05, 2023
Syed Waqas Zamir 906 Dec 30, 2022
Rot-Pro: Modeling Transitivity by Projection in Knowledge Graph Embedding

Rot-Pro : Modeling Transitivity by Projection in Knowledge Graph Embedding This repository contains the source code for the Rot-Pro model, presented a

Tewi 9 Sep 28, 2022
Semi Supervised Learning for Medical Image Segmentation, a collection of literature reviews and code implementations.

Semi-supervised-learning-for-medical-image-segmentation. Recently, semi-supervised image segmentation has become a hot topic in medical image computin

Healthcare Intelligence Laboratory 1.3k Jan 03, 2023
Free like Freedom

This is all very much a work in progress! More to come! ( We're working on it though! Stay tuned!) Installation Open an Anaconda Prompt (in Windows, o

2.3k Jan 04, 2023
3 Apr 20, 2022
Xview3 solution - XView3 challenge, 2nd place solution

Xview3, 2nd place solution https://iuu.xview.us/ test split aggregate score publ

Selim Seferbekov 24 Nov 23, 2022
The official PyTorch code implementation of "Personalized Trajectory Prediction via Distribution Discrimination" in ICCV 2021.

Personalized Trajectory Prediction via Distribution Discrimination (DisDis) The official PyTorch code implementation of "Personalized Trajectory Predi

25 Dec 20, 2022
Pytorch implementation AttnGAN: Fine-Grained Text to Image Generation with Attentional Generative Adversarial Networks

AttnGAN Pytorch implementation for reproducing AttnGAN results in the paper AttnGAN: Fine-Grained Text to Image Generation with Attentional Generative

Tao Xu 1.2k Dec 26, 2022
This is the code of paper ``Contrastive Coding for Active Learning under Class Distribution Mismatch'' with python.

Contrastive Coding for Active Learning under Class Distribution Mismatch Official PyTorch implementation of ["Contrastive Coding for Active Learning u

21 Dec 22, 2022