Rethinking Robust Contrastive Learning from the Adversarial Perspective

Published: 20 Jun 2023, Last Modified: 07 Aug 2023AdvML-Frontiers 2023EveryoneRevisionsBibTeX
Keywords: adversarial robustness, contrastive learning, supervised contrastive learning, representation analysis.
Abstract: To advance the understanding of robust deep learning, we delve into the effects of adversarial training on self-supervised and supervised contrastive learning, alongside supervised learning. Our analysis uncovers significant disparities between adversarial and clean representations in standard-trained networks, across various learning algorithms. Remarkably, adversarial training mitigates these disparities and fosters the convergence of representations toward a universal set, regardless of the learning scheme used. Additionally, we observe that increasing the similarity between adversarial and clean representations, particularly near the end of the network, enhances network robustness. These findings offer valuable insights for designing and training effective and robust deep learning networks.
Submission Number: 67
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