/deep_feature_reweighting

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Last Layer Re-Training is Sufficient for Robustness to Spurious Correlations

This repository contains experiments for the paper Last Layer Re-Training is Sufficient for Robustness to Spurious Correlations by Polina Kirichenko, Pavel Izmailov, and Andrew Gordon Wilson.

Introduction

Neural network classifiers can largely rely on simple spurious features, such as backgrounds, to make predictions. However, even in these cases, we show that they still often learn core features associated with the desired attributes of the data, contrary to recent findings. Inspired by this insight, we demonstrate that simple last layer retraining can match or outperform state-of-the-art approaches on spurious correlation benchmarks, but with profoundly lower complexity and computational expenses. Moreover, we show that last layer retraining on large ImageNet-trained models can also significantly reduce reliance on background and texture information, improving robustness to covariate shift, after only minutes of training on a single GPU.

Please cite our paper if you find it helpful in your work:

@article{kirichenko2022dfr,
  title={Last Layer Re-Training is Sufficient for Robustness to Spurious Correlations},
  author={Kirichenko, Polina and Izmailov, Pavel and Wilson, Andrew Gordon},
  journal={arXiv preprint arXiv:2204.02937},
  year={2022}
}

File Structure

.
+-- notebooks/
|   +-- data_generation/
|   |   +-- generate_imagenet9_bg_paintings.ipynb (ImageNet-9 Paintings-BG data)
|   |   +-- generate_waterbirds_fg_bg.ipynb (Generate FG and BG-Only Waterbirds data)
|   +-- imagenet_stylized/
|   |   +-- imagenet_stylized_dfr_train.ipynb (Train DFR on Stylized Imagenet)
|   |   +-- imagenet_stylized_dfr_evaluate.ipynb (Evaluate DFR on Stylized Imagenet)
|   +-- imagennet9_dfr.ipynb (Train and evaluate DFR on ImageNet-9 BG challenge)
|   +-- in_to_in9.json (ImageNet to ImageNet-9 class maping)
+-- celeba_metadata.csv (Metadata file for CelebA)
+-- train_classifier.py (Train base models on CelebA and WaterBirds)
+-- utils.py (Utility functions)
+-- wb_data.py (CelebA and WaterBirds dataloaders)
+-- imagenet_datasets.py (Dataloaders for ImageNet variations)
+-- imagenet_extract_embeddings.py (Extract embeddings from an ImageNet-like dataset)
+-- dfr_evaluate_spurious.py (Tune and evaluate DFR for a given base model)

Data access

  • Waterbirds: see instructions here.
  • CelebA: see instruction here.
  • ImageNet and Stylized ImageNet: see instruction here.
  • ImageNet-C: see instruction here.
  • ImageNet-R: see instruction here.
  • Background Challenge: see instruction here.

For CelebA, please copy the celeba_metadata.csv from this repo to the root folder containing the CelebA dataset and rename it to metadata.csv.

We provide jupyter notebooks to generate the Paintings-BG split of ImageNet-9 and aligned FG-Only, BG-Only and Original Waterbirds splits in notebooks/data_generation/.

Example comands: spurious correlation benchmarks

Base models

To train base models on CelebA and Waterbirds, use the following commands.

# Waterbirds
python3 train_classifier.py --output_dir=<OUTPUT_DIR> --pretrained_model \
  --num_epochs=100 --weight_decay=1e-3 --batch_size=32 --init_lr=1e-3 \
  --eval_freq=1 --data_dir=<WATERBIRDS_DIR> --test_wb_dir=<WATERBIRDS_DIR> \
  --augment_data --seed=<SEED>

# CelebA
python3 train_classifier.py --output_dir=<OUTPUT_DIR> --pretrained_model \
  --num_epochs=50 --weight_decay=1e-4 --batch_size=128 --init_lr=1e-3 \
  --eval_freq=1 --data_dir=<CELEBA_DIR> --test_wb_dir=<CELEBA_DIR> \
  --augment_data --seed=<SEED>

Here OUTPUT_DIR is a path to the folder where the logs will be stored, WATERBIRDS_DIR and CELEBA_DIR are the directories containing waterbirds and CelebA data respectively, and SEED is the random seed.

To train base models without minority groups (for DFR_{TR-NM}^{TR}), use the following commands.

# Waterbirds
python3 train_classifier.py ---output_dir=<OUTPUT_DIR> --pretrained_model \
  --num_epochs=100 --weight_decay=1e-3 --batch_size=32 --init_lr=1e-3 \
  --eval_freq=1 --data_dir=<WATERBIRDS_DIR> --test_wb_dir=<WATERBIRDS_DIR> \
  --augment_data --seed=<SEED> num_minority_groups_remove=2

# CelebA
python3 train_classifier.py --output_dir=<OUTPUT_DIR> --pretrained_model \
  --num_epochs=50 --weight_decay=1e-4 --batch_size=128 --init_lr=1e-3 \
  --eval_freq=1 --data_dir=<CELEBA_DIR> --test_wb_dir=<CELEBA_DIR> \
  --augment_data --seed=<SEED> --num_minority_groups_remove=1

You can train models without ImageNet-pretrained initialization by removing the --pretrained_model flag. You can disable data augmentation by removing the --augment_data flag. You can change the number of epochs, weight decay, learning rate and batch size with the --num_epochs, --weight_decay, --init_lr, and --batch_size flags respectively.

DFR

You can run DFR (all variations) on the Waterbirds and CelebA data with the following commands.

python3 dfr_evaluate_spurious.py --data_dir=<DATA_DIR> \
  --result_path=<RESULT_PATH.pkl> --ckpt_path=<CKPT_PATH> \
  --tune_class_weights_dfr_train

Here DATA_DIR is the directory containing Waterbirds or CelebA data, RESULT_PATH is the path where a pickle dump of the results will be saved, and CKPT_PATH is the checkpoint path. For DFR_{TR-NM}^{TR} do not use the --tune_class_weights_dfr_train flag, if you do not want to tune the class weights.

The script will output the results to console and save them to RESULT_PATH.

ImageNet experiments

Extracting embeddings

To reproduce the ImageNet experiments in the paper, you will need to first comnpute the embeddings of the data using the base model. We provide a imagenet_extract_embeddings.py script for this purpose:

python3 imagenet_extract_embeddings.py --dataset_dir=<DATA_PATH> \
  --split=[val | train] --model=[resnet50 | vitb16] --batch_size=100

Here you can specify paths to the desired ImageNet variation folder in place of DATA_PATH. You can also specify which dataset variation you are using with the --dataset flag with possible values [imagenet | imagenet-a | imagenet-r | imagenet-c | bg_challenge].

The extracted embeddings will be saved in the <DATA_PATH> root folder.

DFR on Background Challenge

We provide a jupyter notebook to reproduce our results on ImageNet-9 Background challenge data at notebooks/imagennet9_dfr.ipynb.

DFR Texture Bias

We provide a jupyter notebooks to reproduce our results on texture bias data at notebooks/imagenet_stylized/. First, run imagenet_stylized_dfr_train.ipynb to train the DFR models on Stylized ImageNet variations. Then, run imagenet_stylized_dfr_evaluate.ipynb to evaluate the trained models on all ImageNet variations.

Checkpoints

Model checkpoints and last layers trained with DFR for Waterbirds and CelebA are available at this Google drive. For these models we use the new repo which extends this repo.

The checkpoints provide the following results (mean ± std across 5 runs):

  • Waterbirds: 92.0 ± 0.9 worst group accuracy
  • CelebA: 88.02 ± 1.6 worst group accuracy

References