Automatic generation of multiple choice questions for e-assessment

A. Santhanavijayan, S. Balasundaram, S. Narayanan, S. V. Kumar, V. Prasad
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引用次数: 12

Abstract

It is important for students to expertise in their field of study, because there is an agile change in all the domains. Even though resources are available to learn, proper assessment helps them to improve upon their knowledge. In this paper, an automatic generation of multiple choice questions on any user-defined domain is proposed. It first extracts text relevant to the given domain from the web and summarises using fireflies-based preference learning. The sentences in the summary are transformed into stem for the MCQs. The distractors are generated using similarity metrics such as hypernyms and hyponyms. The system also generates analogy questions to test the verbal ability of the students.
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用于电子评估的多项选择题的自动生成
对学生来说,在他们的研究领域拥有专业知识是很重要的,因为所有领域都有敏捷的变化。即使有资源可供学习,适当的评估也有助于他们提高知识水平。本文提出了一种在任意用户定义域上自动生成多选题的方法。它首先从网络中提取与给定领域相关的文本,并使用基于萤火虫的偏好学习进行总结。摘要中的句子被转换为MCQ的词干。干扰物是使用相似性度量生成的,例如上下同义词。该系统还生成模拟题来测试学生的口语能力。
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