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Bridging Contrastive Learning and Domain Adaptation: Theoretical Perspective and Practical Application

28 January 2025
Gonzalo Iñaki Quintana
Laurence Vancamberg
Vincent Jugnon
Agnès Desolneux
Mathilde Mougeot
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Abstract

This work studies the relationship between Contrastive Learning and Domain Adaptation from a theoretical perspective. The two standard contrastive losses, NT-Xent loss (Self-supervised) and Supervised Contrastive loss, are related to the Class-wise Mean Maximum Discrepancy (CMMD), a dissimilarity measure widely used for Domain Adaptation. Our work shows that minimizing the contrastive losses decreases the CMMD and simultaneously improves class-separability, laying the theoretical groundwork for the use of Contrastive Learning in the context of Domain Adaptation. Due to the relevance of Domain Adaptation in medical imaging, we focused the experiments on mammography images. Extensive experiments on three mammography datasets - synthetic patches, clinical (real) patches, and clinical (real) images - show improved Domain Adaptation, class-separability, and classification performance, when minimizing the Supervised Contrastive loss.

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@article{quintana2025_2502.00052,
  title={ Bridging Contrastive Learning and Domain Adaptation: Theoretical Perspective and Practical Application },
  author={ Gonzalo Iñaki Quintana and Laurence Vancamberg and Vincent Jugnon and Agnès Desolneux and Mathilde Mougeot },
  journal={arXiv preprint arXiv:2502.00052},
  year={ 2025 }
}
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