Feb. 1, 2024, 12:45 p.m. | Bin Liu Bang Wang Tianrui Li

cs.LG updates on arXiv.org arxiv.org

Recent years have witnessed many successful applications of contrastive learning in diverse domains, yet its self-supervised version still remains many exciting challenges. As the negative samples are drawn from unlabeled datasets, a randomly selected sample may be actually a false negative to an anchor, leading to incorrect encoder training. This paper proposes a new self-supervised contrastive loss called the BCL loss that still uses random samples from the unlabeled data while correcting the resulting bias with importance weights. The key …

anchor applications bayesian challenges cs.lg datasets diverse domains encoder false negative paper sample samples training

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