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Predicting the Difficulty of Multiple Choice Questions in a High-stakes Medical Exam

机译:预测高风险医学考试中多项选择题的难度

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Predicting the construct-relevant difficulty of Multiple-Choice Questions (MCQs) has the potential to reduce cost while maintaining the quality of high-stakes exams. In this paper, we propose a method for estimating the difficulty of MCQs from a high-stakes medical exam, where all questions were deliberately written to a common reading level. To accomplish this, we extract a large number of linguistic features and embedding types, as well as features quantifying the difficulty of the items for an automatic question-answering system. The results show that the proposed approach outperforms various baselines with a statistically significant difference. Best results were achieved when using the full feature set, where embeddings had the highest predictive power, followed by linguistic features. An ablation study of the various types of linguistic features suggested that information from all levels of linguistic processing contributes to predicting item difficulty, with features related to semantic ambiguity and the psycholinguistic properties of words having a slightly higher importance. Owing to its generic nature, the presented approach has the potential to generalize over other exams containing MCQs.
机译:预测与多项选择题(MCQ)有关的与构造有关的难度有可能在保持高分考试质量的同时降低成本。在本文中,我们提出了一种从高风险医学考试中估算MCQ难度的方法,该方法将所有问题故意写成一个普通的阅读水平。为此,我们提取了大量的语言特征和嵌入类型,以及用于量化自动问答系统中项目难度的特征。结果表明,所提出的方法优于各种基线,具有统计学上的显着差异。当使用完整的功能集时,嵌入效果具有最高的预测能力,其次是语言功能,从而获得了最佳结果。对各种类型的语言特征的消融研究表明,来自各个语言处理层次的信息有助于预测项目难度,其中与语义歧义性和单词的心理语言特性有关的特征具有更高的重要性。由于其通用性,本文提出的方法有可能推广到其他包含MCQ的考试中。

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