Xiaoshuang Shi
2024
ConU: Conformal Uncertainty in Large Language Models with Correctness Coverage Guarantees
Zhiyuan Wang
|
Jinhao Duan
|
Lu Cheng
|
Yue Zhang
|
Qingni Wang
|
Xiaoshuang Shi
|
Kaidi Xu
|
Heng Tao Shen
|
Xiaofeng Zhu
Findings of the Association for Computational Linguistics: EMNLP 2024
Uncertainty quantification (UQ) in natural language generation (NLG) tasks remains an open challenge, exacerbated by the closed-source nature of the latest large language models (LLMs). This study investigates applying conformal prediction (CP), which can transform any heuristic uncertainty notion into rigorous prediction sets, to black-box LLMs in open-ended NLG tasks. We introduce a novel uncertainty measure based on self-consistency theory, and then develop a conformal uncertainty criterion by integrating the uncertainty condition aligned with correctness into the CP algorithm. Empirical evaluations indicate that our uncertainty measure outperforms prior state-of-the-art methods. Furthermore, we achieve strict control over the correctness coverage rate utilizing 7 popular LLMs on 4 free-form NLG datasets, spanning general-purpose and medical scenarios. Additionally, the calibrated prediction sets with small size further highlights the efficiency of our method in providing trustworthy guarantees for practical open-ended NLG applications.
Search
Co-authors
- Zhiyuan Wang 1
- Jinhao Duan 1
- Lu Cheng 1
- Yue Zhang 1
- Qingni Wang 1
- show all...