[NeurIPS 2021] “Improving Contrastive Learning on Imbalanced Data via Open-World Sampling”,

Related tags

Deep LearningMAK
Overview

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}
}
Owner
VITA
Visual Informatics Group @ University of Texas at Austin
VITA
Federated_learning codes used for the the paper "Evaluation of Federated Learning Aggregation Algorithms" and "A Federated Learning Aggregation Algorithm for Pervasive Computing: Evaluation and Comparison"

Federated Distance (FedDist) This is the code accompanying the Percom2021 paper "A Federated Learning Aggregation Algorithm for Pervasive Computing: E

GETALP 8 Jan 03, 2023
Implementation of the paper: "SinGAN: Learning a Generative Model from a Single Natural Image"

SinGAN This is an unofficial implementation of SinGAN from someone who's been sitting right next to SinGAN's creator for almost five years. Please ref

35 Nov 10, 2022
A toolkit for developing and comparing reinforcement learning algorithms.

Status: Maintenance (expect bug fixes and minor updates) OpenAI Gym OpenAI Gym is a toolkit for developing and comparing reinforcement learning algori

OpenAI 29.6k Jan 08, 2023
PyKale is a PyTorch library for multimodal learning and transfer learning as well as deep learning and dimensionality reduction on graphs, images, texts, and videos

PyKale is a PyTorch library for multimodal learning and transfer learning as well as deep learning and dimensionality reduction on graphs, images, texts, and videos. By adopting a unified pipeline-ba

PyKale 370 Dec 27, 2022
Pytorch Implementation of Neural Analysis and Synthesis: Reconstructing Speech from Self-Supervised Representations

NANSY: Unofficial Pytorch Implementation of Neural Analysis and Synthesis: Reconstructing Speech from Self-Supervised Representations Notice Papers' D

Dongho Choi 최동호 104 Dec 23, 2022
Pixel-wise segmentation on VOC2012 dataset using pytorch.

PiWiSe Pixel-wise segmentation on the VOC2012 dataset using pytorch. FCN SegNet PSPNet UNet RefineNet For a more complete implementation of segmentati

Bodo Kaiser 378 Dec 30, 2022
A Closer Look at Reference Learning for Fourier Phase Retrieval

A Closer Look at Reference Learning for Fourier Phase Retrieval This repository contains code for our NeurIPS 2021 Workshop on Deep Learning and Inver

Tobias Uelwer 1 Oct 28, 2021
PyTorch implementation of Spiking Neural Networks trained on surrogate gradient & BPTT using snntorch.

snn-localization repo PyTorch implementation of Spiking Neural Networks trained on surrogate gradient & BPTT using snntorch. Install Dependencies Orig

Sami BARCHID 1 Jan 06, 2022
Learning Energy-Based Models by Diffusion Recovery Likelihood

Learning Energy-Based Models by Diffusion Recovery Likelihood Ruiqi Gao, Yang Song, Ben Poole, Ying Nian Wu, Diederik P. Kingma Paper: https://arxiv.o

Ruiqi Gao 41 Nov 22, 2022
Official implementation of GraphMask as presented in our paper Interpreting Graph Neural Networks for NLP With Differentiable Edge Masking.

GraphMask This repository contains an implementation of GraphMask, the interpretability technique for graph neural networks presented in our ICLR 2021

Michael Schlichtkrull 29 Sep 02, 2022
Neural-Pull: Learning Signed Distance Functions from Point Clouds by Learning to Pull Space onto Surfaces(ICML 2021)

Neural-Pull: Learning Signed Distance Functions from Point Clouds by Learning to Pull Space onto Surfaces(ICML 2021) This repository contains the code

149 Dec 15, 2022
😊 Python module for face feature changing

PyWarping Python module for face feature changing Installation pip install pywarping If you get an error: No such file or directory: 'cmake': 'cmake',

Dopevog 10 Sep 10, 2021
Regularizing Generative Adversarial Networks under Limited Data (CVPR 2021)

Regularizing Generative Adversarial Networks under Limited Data [Project Page][Paper] Implementation for our GAN regularization method. The proposed r

Google 148 Nov 18, 2022
Cupytorch - A small framework mimics PyTorch using CuPy or NumPy

CuPyTorch CuPyTorch是一个小型PyTorch,名字来源于: 不同于已有的几个使用NumPy实现PyTorch的开源项目,本项目通过CuPy支持

Xingkai Yu 23 Aug 17, 2022
f-BRS: Rethinking Backpropagating Refinement for Interactive Segmentation

f-BRS: Rethinking Backpropagating Refinement for Interactive Segmentation [Paper] [PyTorch] [MXNet] [Video] This repository provides code for training

Visual Understanding Lab @ Samsung AI Center Moscow 516 Dec 21, 2022
Code for Motion Representations for Articulated Animation paper

Motion Representations for Articulated Animation This repository contains the source code for the CVPR'2021 paper Motion Representations for Articulat

Snap Research 851 Jan 09, 2023
This app is a simple example of using Strealit to create a financial data web app.

Streamlit Demo: Finance Chart This app is a simple example of using Streamlit to create a financial data web app. This demo use streamlit, pandas and

91 Jan 02, 2023
data/code repository of "C2F-FWN: Coarse-to-Fine Flow Warping Network for Spatial-Temporal Consistent Motion Transfer"

C2F-FWN data/code repository of "C2F-FWN: Coarse-to-Fine Flow Warping Network for Spatial-Temporal Consistent Motion Transfer" (https://arxiv.org/abs/

EKILI 46 Dec 14, 2022
PyTorch implementation of Deformable Convolution

Deformable Convolutional Networks in PyTorch This repo is an implementation of Deformable Convolution. Ported from author's MXNet implementation. Buil

411 Dec 16, 2022
Learning Synthetic Environments and Reward Networks for Reinforcement Learning

Learning Synthetic Environments and Reward Networks for Reinforcement Learning We explore meta-learning agent-agnostic neural Synthetic Environments (

AutoML-Freiburg-Hannover 16 Sep 02, 2022