Automatic story and item generation for reading comprehension assessments with transformers

IF 0.8 Q3 EDUCATION & EDUCATIONAL RESEARCH
O. Bulut, S. Yildirim-Erbasli
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引用次数: 2

Abstract

Reading comprehension is one of the essential skills for students as they make a transition from learning to read to reading to learn. Over the last decade, the increased use of digital learning materials for promoting literacy skills (e.g., oral fluency and reading comprehension) in K-12 classrooms has been a boon for teachers. However, instant access to reading materials, as well as relevant assessment tools for evaluating students’ comprehension skills, remains to be a problem. Teachers must spend many hours looking for suitable materials for their students because high-quality reading materials and assessments are primarily available through commercial literacy programs and websites. This study proposes a promising solution to this problem by employing an artificial intelligence (AI) approach. We demonstrate how to use advanced language models (e.g., OpenAI’s GPT-2 and Google’s T5) to automatically generate reading passages and items. Our preliminary findings suggest that with additional training and fine-tuning, open-source language models could be used to support the instruction and assessment of reading comprehension skills in the classroom. For both automatic story and item generation, the language models performed reasonably; however, the outcomes of these language models still require a human evaluation and further adjustments before sharing them with students. Practical implications of the findings and future research directions are discussed.
自动故事和项目生成与变压器阅读理解评估
阅读理解是学生从学习阅读向阅读学习过渡的基本技能之一。在过去的十年里,在K-12课堂上,越来越多地使用数字学习材料来提高识字技能(如口语流利性和阅读理解),这对教师来说是一个福音。然而,即时获取阅读材料以及评估学生理解能力的相关评估工具仍然是一个问题。教师必须花很多时间为学生寻找合适的材料,因为高质量的阅读材料和评估主要通过商业扫盲计划和网站提供。这项研究通过采用人工智能(AI)方法提出了一个很有前途的解决方案。我们演示了如何使用高级语言模型(例如,OpenAI的GPT-2和谷歌的T5)自动生成阅读段落和项目。我们的初步发现表明,通过额外的培训和微调,开源语言模型可以用于支持课堂上阅读理解技能的教学和评估。对于故事和项目的自动生成,语言模型表现合理;然而,在与学生分享这些语言模型之前,这些模型的结果仍然需要人工评估和进一步调整。讨论了研究结果的实际意义和未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Assessment Tools in Education
International Journal of Assessment Tools in Education EDUCATION & EDUCATIONAL RESEARCH-
自引率
11.10%
发文量
40
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