ACTA: Short-Answer Grading in High-Stakes Medical Exams

King Yiu Suen, Victoria Yaneva, L. Ha, Janet Mee, Yiyun Zhou, Polina Harik
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引用次数: 1

Abstract

This paper presents the ACTA system, which performs automated short-answer grading in the domain of high-stakes medical exams. The system builds upon previous work on neural similarity-based grading approaches by applying these to the medical domain and utilizing contrastive learning as a means to optimize the similarity metric. ACTA is evaluated against three strong baselines and is developed in alignment with operational needs, where low-confidence responses are flagged for human review. Learning curves are explored to understand the effects of training data on performance. The results demonstrate that ACTA leads to substantially lower number of responses being flagged for human review, while maintaining high classification accuracy.
高风险医学考试中的简答评分
本文介绍了在高风险医学考试领域进行自动简答评分的ACTA系统。该系统建立在先前基于神经相似性的评分方法的基础上,将这些方法应用于医学领域,并利用对比学习作为优化相似性度量的手段。ACTA根据三个强有力的基线进行评估,并根据业务需求制定,其中低置信度的响应被标记为人工审查。研究学习曲线以了解训练数据对性能的影响。结果表明,ACTA在保持高分类精度的同时,显著降低了被标记供人类审查的响应数量。
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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