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Supervised Contrastive Learning - NIPS

Supervised Contrastive LearningPrannay Khosla Google ResearchPiotr Teterwak Boston UniversityChen Wang Snap Sarna Google ResearchYonglong Tian MITP hillip Isola MITA aron MaschinotGoogle ResearchCe LiuGoogle ResearchDilip KrishnanGoogle ResearchAbstractContrastive Learning applied to self- Supervised representation Learning has seena resurgence in recent years, leading to state of the art performance in the unsu-pervised training of deep image models. Modern batch Contrastive approachessubsume or significantly outperform traditional Contrastive losses such as triplet,max-margin and the N-pairs loss. In this work, we extend the self-supervisedbatch Contrastive approach to thefully-supervisedsetting, allowing us to effec-tively leverage label information .

34th Conference on Neural Information Processing Systems (NeurIPS 2020), Vancouver, Canada. Figure 2: Supervised vs. self-supervised contrastive losses: The self-supervised contrastive loss (left, Eq.1) contrasts a single positive for each anchor (i.e., an augmented version of the same image) against a set of

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  Information, System, Processing, Inps, Neural, Neural information processing systems

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