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Improving Domain Generalization in Contrastive Learning using Adaptive Temperature Control

Machine Learning 2026-01-13 v1 Artificial Intelligence

Abstract

Self-supervised pre-training with contrastive learning is a powerful method for learning from sparsely labeled data. However, performance can drop considerably when there is a shift in the distribution of data from training to test time. We study this phenomenon in a setting in which the training data come from multiple domains, and the test data come from a domain not seen at training that is subject to significant covariate shift. We present a new method for contrastive learning that incorporates domain labels to increase the domain invariance of learned representations, leading to improved out-of-distribution generalization. Our method adjusts the temperature parameter in the InfoNCE loss -- which controls the relative weighting of negative pairs -- using the probability that a negative sample comes from the same domain as the anchor. This upweights pairs from more similar domains, encouraging the model to discriminate samples based on domain-invariant attributes. Through experiments on a variant of the MNIST dataset, we demonstrate that our method yields better out-of-distribution performance than domain generalization baselines. Furthermore, our method maintains strong in-distribution task performance, substantially outperforming baselines on this measure.

Keywords

Cite

@article{arxiv.2601.07748,
  title  = {Improving Domain Generalization in Contrastive Learning using Adaptive Temperature Control},
  author = {Robert Lewis and Katie Matton and Rosalind W. Picard and John Guttag},
  journal= {arXiv preprint arXiv:2601.07748},
  year   = {2026}
}

Comments

NeurIPS SSL Workshop 2023

R2 v1 2026-07-01T09:01:07.148Z