自动生成大规模的评估问题

Flávio Izo, Jhonatan Leão, Juliana Pinheiro Campos Pirovani, E. Oliveira
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引用次数: 1

摘要

评估是用来诊断学习困难的手段。问卷评估是衡量学生内容学习水平的方法之一。手动阐述问题是费时的,并且让老师在思考不同的问题时感到不舒服。使用自动问题生成器,教师可以访问多个问题并应用自动更正,从而更快地传播评估结果。如果我们分析大规模在线开放课程(MOOCs),人工纠正大量问题是不可能的。我们提出了一种制度性工具,可以从教师插入的免费文本中识别化学实体,并自动生成问题及其相应的答案。我们通过Local Grammar (LG)对化学实体进行识别,然后在Python语言中使用spaCy通过triplets详细阐述自由文本和填空问题。为了验证这个工具,我们使用了两本公认的有机化学书籍。化学专家验证并指出了问题的难度。我们生成了64个问题,其中33个是自由文本问题,31个是填空问题。专家评估的平均值表明,78.77%(平均值)和87.5%(中位数)的问题具有质量,大多数问题具有中等难度水平。本研究建议作为主要贡献的识别命名实体在化学领域和自动生成的问题在葡萄牙语。这些任务可以促进人的工作,减少产生和纠正问题的时间,并通过这些活动降低机构成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Generation of Large-Scale Assessment Questions
Assessment is the means used to diagnose learning difficulties. Assessment through questionnaires is one of the ways used to measure the level of content learning by students. Manually elaborating questions is time-consuming and makes the teacher uncomfortable thinking about different questions. Using an automatic question generator allows the teacher to access several questions and apply automatic correction, disseminating assessment results more quickly. If we analyze Massive Open Online Courses (MOOCs), it becomes humanly impossible to correct the large volume of questions manually. We present an institutional tool that recognizes chemical entities from free texts inserted by the teacher and automatically generates questions and their respective answers. We recognized the chemical entities through Local Grammar (LG), and then we elaborated free-text and fill-in-the-blank questions through triplets with spaCy in Python language. To validate the tool, we used two recognized books in Organic Chemistry. Chemistry specialists validated and indicated the level of difficulty of the questions. We generated 64 questions, 33 of which were free-text questions, and 31 were fill-in-the-blank questions. The average of the experts’ assessment indicated that 78,77% (average) and 87,5% (median) of the questions have quality and that most questions have an intermediate difficulty level. This research suggests as main contributions the recognition of named entities in the chemical area and the automatic generation of questions in Portuguese. These tasks can facilitate the human being’s job, reducing the time for generating and correcting questions and reducing institutional costs with such activities.
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