You're currently viewing an old version of this dataset. To see the current version, click here.

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.

Data and Resources

This dataset has no data

Cite this as

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

Private DOI This DOI is not yet resolvable.
It is available for use in manuscripts, and will be published when the Dataset is made public.

Additional Info

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