Transcription of Supervised Contrastive Learning - NIPS
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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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