Think Together and Work Better: Combining Humans' and LLMs' Think-Aloud Outcomes for Effective Text Evaluation
- URL: http://arxiv.org/abs/2409.07355v1
- Date: Wed, 11 Sep 2024 15:40:07 GMT
- Title: Think Together and Work Better: Combining Humans' and LLMs' Think-Aloud Outcomes for Effective Text Evaluation
- Authors: SeongYeub Chu, JongWoo Kim, MunYong Yi,
- Abstract summary: This study introduces textbfInteractEval, a framework that integrates human expertise and Large Language Models (LLMs)
The framework uses the Think-Aloud (TA) method to generate attributes for checklist-based text evaluation.
- Score: 2.5398014196797605
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This study introduces \textbf{InteractEval}, a framework that integrates human expertise and Large Language Models (LLMs) using the Think-Aloud (TA) method to generate attributes for checklist-based text evaluation. By combining human flexibility and reasoning with LLM consistency, InteractEval outperforms traditional non-LLM-based and LLM-based baselines across four distinct dimensions, consisting of Coherence, Fluency, Consistency, and Relevance. The experiment also investigates the effectiveness of the TA method, showing that it promotes divergent thinking in both humans and LLMs, leading to the generation of a wider range of relevant attributes and enhance text evaluation performance. Comparative analysis reveals that humans excel at identifying attributes related to internal quality (Coherence and Fluency), but LLMs perform better at those attributes related to external alignment (Consistency and Relevance). Consequently, leveraging both humans and LLMs together produces the best evaluation outcomes. In other words, this study emphasizes the necessity of effectively combining humans and LLMs in an automated checklist-based text evaluation framework. The code is available at \textbf{\url{https://github.com/BBeeChu/InteractEval.git}}.
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