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Fusion-Eval: Integrating Assistant Evaluators with LLMs

Authors :
Shu, Lei
Wichers, Nevan
Luo, Liangchen
Zhu, Yun
Liu, Yinxiao
Chen, Jindong
Meng, Lei
Publication Year :
2023

Abstract

Evaluating natural language systems poses significant challenges, particularly in the realms of natural language understanding and high-level reasoning. In this paper, we introduce 'Fusion-Eval', an innovative approach that leverages Large Language Models (LLMs) to integrate insights from various assistant evaluators. The LLM is given the example to evaluate along with scores from the assistant evaluators. Each of these evaluators specializes in assessing distinct aspects of responses. Fusion-Eval achieves a 0.962 system-level Kendall-Tau correlation with humans on SummEval and a 0.744 turn-level Spearman correlation on TopicalChat, which is significantly higher than baseline methods. These results highlight Fusion-Eval's significant potential in the realm of natural language system evaluation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.09204
Document Type :
Working Paper