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[NeurIPS 2021] “Improving Contrastive Learning on Imbalanced Data via Open-World Sampling”, Ziyu Jiang, Tianlong Chen, Ting Chen, Zhangyang Wang

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Improving Contrastive Learning on Imbalanced Data via Open-World Sampling

Introduction

Contrastive learning approaches have achieved great success in learning visual representations with few labels. That implies a tantalizing possibility of scaling them up beyond a curated target benchmark, to incorporating more unlabeled images from the internet-scale external sources to enhance its performance. However, in practice, with larger amount of unlabeled data, it requires more compute resources for the bigger model size and longer training. Moreover, open-world unlabeled data have implicit long-tail distribution of various class attributes, many of which are out of distribution and can lead to data imbalancedness issue. This motivates us to seek a principled approach of selecting a subset of unlabeled data from an external source that are relevant for learning better and diverse representations. In this work, we propose an open-world unlabeled data sampling strategy called Model-Aware K-center (MAK), which follows three simple principles: (1) tailness, which encourages sampling of examples from tail classes, by sorting the empirical contrastive loss expectation (ECLE) of samples over random data augmentations; (2) proximity, which rejects the out-of-distribution outliers that might distract training; and (3) diversity, which ensures diversity in the set of sampled examples. Empirically, using ImageNet-100-LT (without labels) as the target dataset and two ``noisy'' external data sources, we demonstrate that MAK can consistently improve both the overall representation quality and class balancedness of the learned features, as evaluated via linear classifier evaluation on full-shot and few-shot settings.

Method

pipeline

Environment

Requirements:

pytorch 1.7.1 
opencv-python
kmeans-pytorch 0.3
scikit-learn

Recommend installation cmds (linux)

conda install pytorch==1.7.1 torchvision==0.8.2 torchaudio==0.7.2 cudatoolkit=10.2 -c pytorch # change cuda version according to hardware
pip install opencv-python
conda install -c conda-forge matplotlib scikit-learn

Sampling

Prepare

change the access permissions

chmod +x  cmds/shell_scrips/*

Get pre-trained model on LT datasets

bash ./cmds/shell_scrips/imagenet-100-add-data.sh -g 2 -p 4866 -w 10 --seed 10 --additional_dataset None

Sampling on ImageNet 900

Inference

inference on sampling dataset (no Aug)

bash ./cmds/shell_scrips/imagenet-100-inference.sh -p 5555 --workers 10 --pretrain_seed 10 \
--epochs 1000 --batch_size 256 --inference_dataset imagenet-900 --inference_dataset_split ImageNet_900_train \
--inference_repeat_time 1 --inference_noAug True

inference on sampling dataset (no Aug)

bash ./cmds/shell_scrips/imagenet-100-inference.sh -p 5555 --workers 10 --pretrain_seed 10 \
--epochs 1000 --batch_size 256 --inference_dataset imagenet-100 --inference_dataset_split imageNet_100_LT_train \
--inference_repeat_time 1 --inference_noAug True

inference on sampling dataset (w/ Aug)

bash ./cmds/shell_scrips/imagenet-100-inference.sh -p 5555 --workers 10 --pretrain_seed 10 \
--epochs 1000 --batch_size 256 --inference_dataset imagenet-900 --inference_dataset_split ImageNet_900_train \
--inference_repeat_time 10

sampling 10K at Imagenet900

bash ./cmds/shell_scrips/sampling.sh --pretrain_seed 10

Citation

@inproceedings{
jiang2021improving,
title={Improving Contrastive Learning on Imbalanced Data via Open-World Sampling},
author={Jiang, Ziyu and Chen, Tianlong and Chen, Ting and Wang, Zhangyang},
booktitle={Advances in Neural Information Processing Systems 35},
year={2021}
}

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[NeurIPS 2021] “Improving Contrastive Learning on Imbalanced Data via Open-World Sampling”, Ziyu Jiang, Tianlong Chen, Ting Chen, Zhangyang Wang

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