Feb. 5, 2024, 3:42 p.m. | Alice Bizeul Bernhard Sch\"olkopf Carl Allen

cs.LG updates on arXiv.org arxiv.org

Self-supervised learning (SSL) learns representations by leveraging an auxiliary unsupervised task, such as classifying semantically related samples, e.g. different data augmentations or modalities. Of the many approaches to SSL, contrastive methods, e.g. SimCLR, CLIP and VicREG, have gained attention for learning representations that achieve downstream performance close to that of supervised learning. However, a theoretical understanding of the mechanism behind these methods eludes. We propose a generative latent variable model for the data and show that several families of discriminative …

attention clip cs.ai cs.lg data performance probabilistic model representation representation learning samples self-supervised learning ssl stat.ml supervised learning unsupervised

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