OTTER: Improving Zero-Shot Classification via Optimal Transport

Zero-shot models suffer due to artifacts inherited from pretraining. A particularly detrimental artifact, caused by unbalanced web-scale pretraining data, is mismatched label distribution. Existing approaches that seek to repair the label distribution are not suitable in zero-shot settings, as they have incompatible requirements such as access to labeled downstream task data or knowledge of the true label balance in the pretraining distribution.

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Changho Shin, Jitian Zhao, Sonia Cromp, Harit Vishwakarma, Frederic Sala (2025). Dataset: OTTER: Improving Zero-Shot Classification via Optimal Transport. https://doi.org/10.57702/85fh6h5w

DOI retrieved: January 2, 2025

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Created January 2, 2025
Last update January 2, 2025
Defined In https://doi.org/10.48550/arXiv.2404.08461
Author Changho Shin
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Jitian Zhao
Sonia Cromp
Harit Vishwakarma
Frederic Sala
Homepage https://arxiv.org/abs/2108.02818