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Towards Reliable Zero Shot Classification in Self-Supervised Models with Conformal Prediction

Towards Reliable Zero Shot Classification in Self-Supervised Models with Conformal Prediction

来源:Arxiv_logoArxiv
英文摘要

Self-supervised models trained with a contrastive loss such as CLIP have shown to be very powerful in zero-shot classification settings. However, to be used as a zero-shot classifier these models require the user to provide new captions over a fixed set of labels at test time. In many settings, it is hard or impossible to know if a new query caption is compatible with the source captions used to train the model. We address these limitations by framing the zero-shot classification task as an outlier detection problem and develop a conformal prediction procedure to assess when a given test caption may be reliably used. On a real-world medical example, we show that our proposed conformal procedure improves the reliability of CLIP-style models in the zero-shot classification setting, and we provide an empirical analysis of the factors that may affect its performance.

Andrew Beam、Rudraksh Tuwani、Bhawesh Kumar、Anil Palepu

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Andrew Beam,Rudraksh Tuwani,Bhawesh Kumar,Anil Palepu.Towards Reliable Zero Shot Classification in Self-Supervised Models with Conformal Prediction[EB/OL].(2022-10-27)[2025-07-21].https://arxiv.org/abs/2210.15805.点此复制

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