自动测验生成的TED演讲视频剪辑,以评估听力理解

Yi-Ting Huang, Ya-Min Tseng, Yeali S. Sun, Meng Chang Chen
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引用次数: 23

摘要

近年来,电子学习和自然语言处理(NLP)领域的研究人员对自动问题生成越来越感兴趣。然而,多媒体学习中听力理解的自动评价研究却很少。在这项工作中,我们提出了一个TED演讲视频剪辑的自动测验生成,称为TED测验。TED Quiz会生成两种类型的选择题,即要点题和细节题。我们使用基于图的算法,Lex Rank,来识别演讲中最重要的部分,作为要点-内容问题的主要概念。我们还提出了一种用于细节问题生成的干扰因素选择方法,该方法生成语法正确但语义错误的句子作为干扰因素。实验结果表明,自动生成问题的测量结果与人工生成问题的测量结果具有可比性,因为它们的得分显著相关。此外,大多数被试都认为生成的听力理解题质量好、有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TEDQuiz: Automatic Quiz Generation for TED Talks Video Clips to Assess Listening Comprehension
In the last few years, researchers in the field of e-learning and Natural Language Processing (NLP) have shown an increased interest in automatic question generation. However, little research has discussed the automatic evaluation of listening comprehension in multimedia learning. In this work, we present an automatic quiz generation for TED Talks video clips, called TED Quiz. TED Quiz generates multiple-choice questions in two question types, gist-content questions and detail questions. We use a graph-based algorithm, Lex Rank, to identify the most important part of a talk, as the main concept of a gist-content question. We also proposed an approach to distractor selection for detail question generation that generates grammatically correct but semantically wrong sentences as distractors. The experimental results demonstrated that the measured results from automatically generated questions are comparable with that from manually generated questions because their scores were significantly correlated. Moreover, most subjects agreed that the generated listening comprehension questions were of quality and usefulness.
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