Examining the Efficacy of ChatGPT in Marking Short-Answer Assessments in an Undergraduate Medical Program

Leo Morjaria, Levi Burns, Keyna Bracken, Anthony J Levinson, Quang N. Ngo, Mark Lee, Matthew Sibbald
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Abstract

Traditional approaches to marking short-answer questions face limitations in timeliness, scalability, inter-rater reliability, and faculty time costs. Harnessing generative artificial intelligence (AI) to address some of these shortcomings is attractive. This study aims to validate the use of ChatGPT for evaluating short-answer assessments in an undergraduate medical program. Ten questions from the pre-clerkship medical curriculum were randomly chosen, and for each, six previously marked student answers were collected. These sixty answers were evaluated by ChatGPT in July 2023 under four conditions: with both a rubric and standard, with only a standard, with only a rubric, and with neither. ChatGPT displayed good Spearman correlations with a single human assessor (r = 0.6–0.7, p < 0.001) across all conditions, with the absence of a standard or rubric yielding the best correlation. Scoring differences were common (65–80%), but score adjustments of more than one point were less frequent (20–38%). Notably, the absence of a rubric resulted in systematically higher scores (p < 0.001, partial η2 = 0.33). Our findings demonstrate that ChatGPT is a viable, though imperfect, assistant to human assessment, performing comparably to a single expert assessor. This study serves as a foundation for future research on AI-based assessment techniques with potential for further optimization and increased reliability.
检验 ChatGPT 在医学本科课程中标记简答评估的有效性
传统的简答题评分方法在及时性、可扩展性、评分者之间的可靠性以及教师的时间成本等方面都存在局限性。利用生成式人工智能(AI)来解决其中的一些不足是很有吸引力的。本研究旨在验证 ChatGPT 在医学本科课程简答评估中的应用。研究人员从实习前医学课程中随机抽取了十道题,每道题都收集了六份之前标注过的学生答案。ChatGPT 于 2023 年 7 月在四种条件下对这 60 份答案进行了评估:同时使用评分标准和标准、仅使用标准、仅使用评分标准以及两者均不使用。在所有条件下,ChatGPT 与单个人类评测员都显示出良好的斯皮尔曼相关性(r = 0.6-0.7,p < 0.001),其中没有标准或评分标准的相关性最好。评分差异很常见(65-80%),但分数调整超过 1 分的情况较少(20-38%)。值得注意的是,没有评分标准会导致系统得分更高(p < 0.001,部分 η2 = 0.33)。我们的研究结果表明,ChatGPT 是一种可行的人工评估辅助工具,尽管并不完美,但其性能可与单个专家评估员媲美。这项研究为今后研究基于人工智能的评估技术奠定了基础,并有可能进一步优化和提高可靠性。
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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