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CritiqueLLM: Towards an Informative Critique Generation Model for Evaluation of Large Language Model Generation

30 November 2023
Pei Ke
Bosi Wen
Andrew Feng
Xiao-Yang Liu
Xuanyu Lei
Jiale Cheng
Sheng-Ping Wang
Aohan Zeng
Yuxiao Dong
Hongning Wang
Jie Tang
Minlie Huang
    ELM
    ALM
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Abstract

Since the natural language processing (NLP) community started to make large language models (LLMs) act as a critic to evaluate the quality of generated texts, most of the existing works train a critique generation model on the evaluation data labeled by GPT-4's direct prompting. We observe that these models lack the ability to generate informative critiques in both pointwise grading and pairwise comparison especially without references. As a result, their generated critiques cannot provide fine-grained distinguishability on generated texts, causing unsatisfactory evaluation performance. In this paper, we propose a simple yet effective method called Eval-Instruct, which can first acquire pointwise grading critiques with pseudo references and then revise these critiques via multi-path prompting to obtain informative evaluation data in different tasks and settings, including pointwise grading and pairwise comparison with / without references. After fine-tuning on these data, the resulting model CritiqueLLM is empirically shown to outperform ChatGPT and all the open-source baselines and even achieve comparable evaluation performance to GPT-4 in system-level correlations of pointwise grading. We also demonstrate that our generated critiques can act as scalable feedback to further improve the generation quality of strong LLMs like ChatGPT.

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