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InFoBench: Evaluating Instruction Following Ability in Large Language Models

InFoBench: Evaluating Instruction Following Ability in Large Language Models

来源:Arxiv_logoArxiv
英文摘要

This paper introduces the Decomposed Requirements Following Ratio (DRFR), a new metric for evaluating Large Language Models' (LLMs) ability to follow instructions. Addressing a gap in current methodologies, DRFR breaks down complex instructions into simpler criteria, facilitating a detailed analysis of LLMs' compliance with various aspects of tasks. Alongside this metric, we present InFoBench, a benchmark comprising 500 diverse instructions and 2,250 decomposed questions across multiple constraint categories. Our experiments compare DRFR with traditional scoring methods and explore annotation sources, including human experts, crowd-sourced workers, and GPT-4. The findings demonstrate DRFR's higher reliability and the effectiveness of using GPT-4 as a cost-efficient annotator. The evaluation of several advanced LLMs using this framework reveals their strengths and areas needing improvement, particularly in complex instruction-following. This study contributes a novel metric and benchmark, offering insights for future LLM development and evaluation.

Kaiqiang Song、Pengfei Liu、Yebowen Hu、Sangwoo Cho、Wenlin Yao、Yiwei Qin、Fei Liu、Dong Yu、Xuansheng Wu、Xiaoyang Wang

计算技术、计算机技术

Kaiqiang Song,Pengfei Liu,Yebowen Hu,Sangwoo Cho,Wenlin Yao,Yiwei Qin,Fei Liu,Dong Yu,Xuansheng Wu,Xiaoyang Wang.InFoBench: Evaluating Instruction Following Ability in Large Language Models[EB/OL].(2024-01-07)[2025-08-03].https://arxiv.org/abs/2401.03601.点此复制

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