Automated evaluation of written discourse coherence using GPT-4

Ben Naismith, Phoebe Mulcaire, J. Burstein
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引用次数: 5

Abstract

The popularization of large language models (LLMs) such as OpenAI’s GPT-3 and GPT-4 have led to numerous innovations in the field of AI in education. With respect to automated writing evaluation (AWE), LLMs have reduced challenges associated with assessing writing quality characteristics that are difficult to identify automatically, such as discourse coherence. In addition, LLMs can provide rationales for their evaluations (ratings) which increases score interpretability and transparency. This paper investigates one approach to producing ratings by training GPT-4 to assess discourse coherence in a manner consistent with expert human raters. The findings of the study suggest that GPT-4 has strong potential to produce discourse coherence ratings that are comparable to human ratings, accompanied by clear rationales. Furthermore, the GPT-4 ratings outperform traditional NLP coherence metrics with respect to agreement with human ratings. These results have implications for advancing AWE technology for learning and assessment.
使用GPT-4自动评估书面语篇连贯性
OpenAI的GPT-3和GPT-4等大型语言模型(llm)的普及,导致了人工智能在教育领域的众多创新。在自动写作评估(AWE)方面,法学硕士减少了与评估难以自动识别的写作质量特征(如语篇连贯)相关的挑战。此外,法学硕士可以为他们的评估(评级)提供理由,这增加了分数的可解释性和透明度。本文研究了一种通过训练GPT-4来产生评级的方法,以与专家评估者一致的方式评估语篇一致性。研究结果表明,GPT-4具有强大的潜力,可以产生与人类评级相当的话语连贯评级,并附有明确的理由。此外,GPT-4评分在与人类评分的一致性方面优于传统的NLP一致性指标。这些结果对推进AWE技术的学习和评估具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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