论文标题

R2DE:NLP估计新生成问题的IRT参数的方法

R2DE: a NLP approach to estimating IRT parameters of newly generated questions

论文作者

Benedetto, Luca, Cappelli, Andrea, Turrin, Roberto, Cremonesi, Paolo

论文摘要

考试的主要目标是对学生对特定学科的专业知识进行评估。这样的专业知识(也称为技能或知识水平)就可以以不同的方式利用(例如,为学生分配成绩,以了解学生是否需要一些支持等)。同样,在被用来评估学生之前,必须以某种方式评估考试中出现的问题。问题评估的标准方法是主观的(例如,由人类专家评估),或者在问题产生过程中引入了很长的延迟(例如,与真实的学生进行测试)。在这项工作中,我们介绍了R2DE(这是难度和歧视估算的回归​​剂),该模型能够通过查看问题的文本和可能的选择的文本来评估新生成的多项选择问题。特别是,它可以估计每个问题的难度和歧视,因为它们在项目响应理论中定义。我们还介绍了来自电子学习平台的现实世界中大规模数据集进行的广泛实验的结果,这表明我们的模型可用于对新创建的问题进行初步评估,并缓解问题产生的一些问题。

The main objective of exams consists in performing an assessment of students' expertise on a specific subject. Such expertise, also referred to as skill or knowledge level, can then be leveraged in different ways (e.g., to assign a grade to the students, to understand whether a student might need some support, etc.). Similarly, the questions appearing in the exams have to be assessed in some way before being used to evaluate students. Standard approaches to questions' assessment are either subjective (e.g., assessment by human experts) or introduce a long delay in the process of question generation (e.g., pretesting with real students). In this work we introduce R2DE (which is a Regressor for Difficulty and Discrimination Estimation), a model capable of assessing newly generated multiple-choice questions by looking at the text of the question and the text of the possible choices. In particular, it can estimate the difficulty and the discrimination of each question, as they are defined in Item Response Theory. We also present the results of extensive experiments we carried out on a real world large scale dataset coming from an e-learning platform, showing that our model can be used to perform an initial assessment of newly created questions and ease some of the problems that arise in question generation.

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