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Understanding Negative Samples in Instance Discriminative Self-supervised Representation Learning

Machine Learning 2022-01-17 v5 Machine Learning

Abstract

Instance discriminative self-supervised representation learning has been attracted attention thanks to its unsupervised nature and informative feature representation for downstream tasks. In practice, it commonly uses a larger number of negative samples than the number of supervised classes. However, there is an inconsistency in the existing analysis; theoretically, a large number of negative samples degrade classification performance on a downstream supervised task, while empirically, they improve the performance. We provide a novel framework to analyze this empirical result regarding negative samples using the coupon collector's problem. Our bound can implicitly incorporate the supervised loss of the downstream task in the self-supervised loss by increasing the number of negative samples. We confirm that our proposed analysis holds on real-world benchmark datasets.

Keywords

Cite

@article{arxiv.2102.06866,
  title  = {Understanding Negative Samples in Instance Discriminative Self-supervised Representation Learning},
  author = {Kento Nozawa and Issei Sato},
  journal= {arXiv preprint arXiv:2102.06866},
  year   = {2022}
}

Comments

NeurIPS 2021. 26 pages, 6 figures, and 6 tables