智能辅导系统的自动问题生成

Riken Shah, Deesha Shah, Lakshmi Kurup
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引用次数: 20

摘要

在本文中,我们提出了一个自动生成mcq(多项选择题)的系统,该系统可以针对任何给定的输入文本以及一组干扰。该系统在基于维基百科的数据集上进行训练,该数据集由维基百科文章的url组成。由双字母和单字母组成的重要单词(关键字)被提取出来,并与知识库的许多其他组件一起存储在字典中。我们使用逆文档频率(IDF)度量对提取的关键字进行排序,并使用基于上下文的相似度方法使用聚合关系发现技术来生成干扰物。此外,问题生成阶段包括删除以语篇连接词开头的句子,以避免出现信息不完整的问题。与许多类似的方法相比,我们获得了显著的准确性。考虑到没有人为干预,结果相当有希望。在mooc(大规模在线开放课程)、智能辅导系统以及学习新概念时的自我评估中,自动生成问题的任务非常重要。虽然我们的系统是为物理学领域发展起来的,但它可以推广到任何领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic question generation for intelligent tutoring systems
In this paper, we present the system of automatic MCQs (Multiple Choice Questions) generation for any given input text along with a set of distractors. The system is trained on a Wikipedia-based dataset consisting of URLs of Wikipedia articles. The important words (keywords) which consist of both bigrams and unigrams are extracted and stored in a dictionary along with many other components of the knowledge base. We have used Inverse Document Frequency (IDF) measure for ranking the extracted keywords and Context-Based Similarity approach using Paradigmatic Relation discovery techniques for generation of distractors. In addition, the question generation phase includes eliminating sentences starting with Discourse Connectives to avoid a question with incomplete information. We have obtained significant accuracy compared to many similar approaches. The results are quite promising considering that there is no human intervention. The task of automatic question generation can be of quite an importance in MOOCs (Massive Open Online Courses), Intelligent Tutoring Systems and for self-assessment while learning a new concept. Though we have developed our system for the field of physics, it can be extended to any field.
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