Timezone: »
Recent work has shown that, when integrated with adversarial training, self-supervised pre-training can lead to state-of-the-art robustness In this work, we improve robustness-aware self-supervised pre-training by learning representations that are consistent under both data augmentations and adversarial perturbations. Our approach leverages a recent contrastive learning framework, which learns representations by maximizing feature consistency under differently augmented views. This fits particularly well with the goal of adversarial robustness, as one cause of adversarial fragility is the lack of feature invariance, i.e., small input perturbations can result in undesirable large changes in features or even predicted labels. We explore various options to formulate the contrastive task, and demonstrate that by injecting adversarial perturbations, contrastive pre-training can lead to models that are both label-efficient and robust. We empirically evaluate the proposed Adversarial Contrastive Learning (ACL) and show it can consistently outperform existing methods. For example on the CIFAR-10 dataset, ACL outperforms the previous state-of-the-art unsupervised robust pre-training approach by 2.99% on robust accuracy and 2.14% on standard accuracy. We further demonstrate that ACL pre-training can improve semi-supervised adversarial training, even when only a few labeled examples are available. Our codes and pre-trained models have been released at: https://github.com/VITA-Group/Adversarial-Contrastive-Learning.
Author Information
Ziyu Jiang (Texas A&M University)
Tianlong Chen (Unversity of Texas at Austin)
Ting Chen (Google)
Zhangyang Wang (University of Texas at Austin)
More from the Same Authors
-
2022 : HotProtein: A Novel Framework for Protein Thermostability Prediction and Editing »
Tianlong Chen · Chengyue Gong · Daniel Diaz · Xuxi Chen · Jordan Wells · Qiang Liu · Zhangyang Wang · Andrew Ellington · Alex Dimakis · Adam Klivans -
2022 Spotlight: Sparse Winning Tickets are Data-Efficient Image Recognizers »
Mukund Varma T · Xuxi Chen · Zhenyu Zhang · Tianlong Chen · Subhashini Venugopalan · Zhangyang Wang -
2022 Poster: Randomized Channel Shuffling: Minimal-Overhead Backdoor Attack Detection without Clean Datasets »
Ruisi Cai · Zhenyu Zhang · Tianlong Chen · Xiaohan Chen · Zhangyang Wang -
2022 Poster: Augmentations in Hypergraph Contrastive Learning: Fabricated and Generative »
Tianxin Wei · Yuning You · Tianlong Chen · Yang Shen · Jingrui He · Zhangyang Wang -
2022 Poster: Signal Processing for Implicit Neural Representations »
Dejia Xu · Peihao Wang · Yifan Jiang · Zhiwen Fan · Zhangyang Wang -
2022 Poster: Back Razor: Memory-Efficient Transfer Learning by Self-Sparsified Backpropagation »
Ziyu Jiang · Xuxi Chen · Xueqin Huang · Xianzhi Du · Denny Zhou · Zhangyang Wang -
2022 Poster: Trap and Replace: Defending Backdoor Attacks by Trapping Them into an Easy-to-Replace Subnetwork »
Haotao Wang · Junyuan Hong · Aston Zhang · Jiayu Zhou · Zhangyang Wang -
2022 Poster: Scaling Multimodal Pre-Training via Cross-Modality Gradient Harmonization »
Junru Wu · Yi Liang · feng han · Hassan Akbari · Zhangyang Wang · Cong Yu -
2022 Poster: Deep Architecture Connectivity Matters for Its Convergence: A Fine-Grained Analysis »
Wuyang Chen · Wei Huang · Xinyu Gong · Boris Hanin · Zhangyang Wang -
2022 Poster: Sparse Winning Tickets are Data-Efficient Image Recognizers »
Mukund Varma T · Xuxi Chen · Zhenyu Zhang · Tianlong Chen · Subhashini Venugopalan · Zhangyang Wang -
2022 Poster: Symbolic Distillation for Learned TCP Congestion Control »
S P Sharan · Wenqing Zheng · Kuo-Feng Hsu · Jiarong Xing · Ang Chen · Zhangyang Wang -
2022 Poster: M³ViT: Mixture-of-Experts Vision Transformer for Efficient Multi-task Learning with Model-Accelerator Co-design »
hanxue liang · Zhiwen Fan · Rishov Sarkar · Ziyu Jiang · Tianlong Chen · Kai Zou · Yu Cheng · Cong Hao · Zhangyang Wang -
2022 Poster: Old can be Gold: Better Gradient Flow can Make Vanilla-GCNs Great Again »
AJAY JAISWAL · Peihao Wang · Tianlong Chen · Justin Rousseau · Ying Ding · Zhangyang Wang -
2022 Poster: Advancing Model Pruning via Bi-level Optimization »
Yihua Zhang · Yuguang Yao · Parikshit Ram · Pu Zhao · Tianlong Chen · Mingyi Hong · Yanzhi Wang · Sijia Liu -
2022 Poster: A Comprehensive Study on Large-Scale Graph Training: Benchmarking and Rethinking »
Keyu Duan · Zirui Liu · Peihao Wang · Wenqing Zheng · Kaixiong Zhou · Tianlong Chen · Xia Hu · Zhangyang Wang -
2021 Poster: Improving Contrastive Learning on Imbalanced Data via Open-World Sampling »
Ziyu Jiang · Tianlong Chen · Ting Chen · Zhangyang Wang -
2021 Poster: Sparse Training via Boosting Pruning Plasticity with Neuroregeneration »
Shiwei Liu · Tianlong Chen · Xiaohan Chen · Zahra Atashgahi · Lu Yin · Huanyu Kou · Li Shen · Mykola Pechenizkiy · Zhangyang Wang · Decebal Constantin Mocanu -
2021 Poster: Chasing Sparsity in Vision Transformers: An End-to-End Exploration »
Tianlong Chen · Yu Cheng · Zhe Gan · Lu Yuan · Lei Zhang · Zhangyang Wang -
2021 Poster: Data-Efficient GAN Training Beyond (Just) Augmentations: A Lottery Ticket Perspective »
Tianlong Chen · Yu Cheng · Zhe Gan · Jingjing Liu · Zhangyang Wang -
2021 Poster: Sanity Checks for Lottery Tickets: Does Your Winning Ticket Really Win the Jackpot? »
Xiaolong Ma · Geng Yuan · Xuan Shen · Tianlong Chen · Xuxi Chen · Xiaohan Chen · Ning Liu · Minghai Qin · Sijia Liu · Zhangyang Wang · Yanzhi Wang -
2021 Poster: You are caught stealing my winning lottery ticket! Making a lottery ticket claim its ownership »
Xuxi Chen · Tianlong Chen · Zhenyu Zhang · Zhangyang Wang -
2020 Workshop: Second Workshop on AI for Humanitarian Assistance and Disaster Response »
Ritwik Gupta · Robin Murphy · Eric Heim · Zhangyang Wang · Bryce Goodman · Nirav Patel · Piotr Bilinski · Edoardo Nemni -
2020 Poster: Graph Contrastive Learning with Augmentations »
Yuning You · Tianlong Chen · Yongduo Sui · Ting Chen · Zhangyang Wang · Yang Shen -
2020 Poster: The Origins and Prevalence of Texture Bias in Convolutional Neural Networks »
Katherine L. Hermann · Ting Chen · Simon Kornblith -
2020 Poster: MATE: Plugging in Model Awareness to Task Embedding for Meta Learning »
Xiaohan Chen · Zhangyang Wang · Siyu Tang · Krikamol Muandet -
2020 Oral: The Origins and Prevalence of Texture Bias in Convolutional Neural Networks »
Katherine L. Hermann · Ting Chen · Simon Kornblith -
2020 Poster: Training Stronger Baselines for Learning to Optimize »
Tianlong Chen · Weiyi Zhang · Zhou Jingyang · Shiyu Chang · Sijia Liu · Lisa Amini · Zhangyang Wang -
2020 Poster: Big Self-Supervised Models are Strong Semi-Supervised Learners »
Ting Chen · Simon Kornblith · Kevin Swersky · Mohammad Norouzi · Geoffrey E Hinton -
2020 Spotlight: Training Stronger Baselines for Learning to Optimize »
Tianlong Chen · Weiyi Zhang · Zhou Jingyang · Shiyu Chang · Sijia Liu · Lisa Amini · Zhangyang Wang -
2020 Poster: Once-for-All Adversarial Training: In-Situ Tradeoff between Robustness and Accuracy for Free »
Haotao Wang · Tianlong Chen · Shupeng Gui · TingKuei Hu · Ji Liu · Zhangyang Wang -
2020 Poster: FracTrain: Fractionally Squeezing Bit Savings Both Temporally and Spatially for Efficient DNN Training »
Yonggan Fu · Haoran You · Yang Zhao · Yue Wang · Chaojian Li · Kailash Gopalakrishnan · Zhangyang Wang · Yingyan Lin -
2020 Poster: The Lottery Ticket Hypothesis for Pre-trained BERT Networks »
Tianlong Chen · Jonathan Frankle · Shiyu Chang · Sijia Liu · Yang Zhang · Zhangyang Wang · Michael Carbin -
2020 Poster: ShiftAddNet: A Hardware-Inspired Deep Network »
Haoran You · Xiaohan Chen · Yongan Zhang · Chaojian Li · Sicheng Li · Zihao Liu · Zhangyang Wang · Yingyan Lin -
2019 Poster: E2-Train: Training State-of-the-art CNNs with Over 80% Less Energy »
Ziyu Jiang · Yue Wang · Xiaohan Chen · Pengfei Xu · Yang Zhao · Yingyan Lin · Zhangyang Wang