As large language models continue to be widely developed, robust uncertainty quantification techniques will become crucial for their safe deployment in high-stakes scenarios. In this work, we explore how conformal prediction can be used to provide uncertainty quantification in language models for the specific task of multiple-choice question-answering. We find that the uncertainty estimates from conformal prediction are tightly correlated with prediction accuracy. This observation can be useful for downstream applications such as selective classification and filtering out low-quality predictions. We also investigate the exchangeability assumption required by conformal prediction to out-of-subject questions, which may be a more realistic scenario for many practical applications. Our work contributes towards more trustworthy and reliable usage of large language models in safety-critical situations, where robust guarantees of error rate are required.
Conformal Prediction with Large Language Models for Multi-Choice Question Answering
Conformal prediction provides uncertainty estimates in large language models for multiple-choice questions, improving accuracy and safety in out-of-subject scenarios.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 7
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2305.18404v3ARXIV-DEFAULT
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