Aligning open educational resources to new taxonomies: How AI technologies can help and in which scenarios

IF 8.9 1区 教育学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Zhi Li , Zachary A. Pardos , Cheng Ren
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引用次数: 0

Abstract

Aligning open educational resources (OER) to skill taxonomies is a common task in the education field and helps teachers better locate material that aligns with the standards of their curriculum. When taxonomies change, as they periodically do, re-tagging the increasing mass of open educational resources is needed. The process of manual tagging is, however, exceedingly labor intensive. We propose and evaluate a novel combination of machine learning methods to help automate tagging open educational resources with skills from an existing taxonomy as well as skills from any newly introduced taxonomy. We collected text, image figures, and videos from tens of thousands of educational resources from two major digital learning platforms to answer the research questions of: how effective are machine learning models in automatically updating OER classification to reflect a new taxonomy (RQ1), and which models may be of practical use in different scenarios (RQ2)? Using several taxonomies, including the US Common Core, we find that while full automation is not practically viable, our most generalizable model can reach non-expert human labeling performance requiring only 100 labeled examples and near expert level with 5000. We believe these novel findings may have immediate utility for practitioners and policymakers and better ready the growing landscape of open educational resources for the advent of new taxonomies ahead. We publicly release our pre-trained US Common Core and new taxonomy tagging models, providing guidance on their viability in various real-world scenarios.

根据新的分类法调整开放教育资源:人工智能技术如何提供帮助以及在哪些情况下提供帮助
将开放教育资源(OER)与技能分类标准对齐是教育领域的一项常见任务,有助于教师更好地找到符合课程标准的材料。当分类标准定期发生变化时,就需要对不断增加的大量开放教育资源进行重新标记。然而,手动标记的过程非常耗费人力。我们提出并评估了一种新颖的机器学习方法组合,以帮助利用现有分类标准中的技能以及任何新引入的分类标准中的技能对开放教育资源进行自动标记。我们从两个主要数字学习平台的数万个教育资源中收集了文本、图片和视频,以回答以下研究问题:机器学习模型在自动更新开放教育资源分类以反映新分类标准方面的效果如何(问题 1)?通过使用包括美国共同核心在内的多个分类标准,我们发现,虽然全自动操作实际上并不可行,但我们最具通用性的模型只需 100 个标注示例就能达到非专家级的人工标注效果,而使用 5000 个标注示例就能达到接近专家级的效果。我们相信,这些新发现可能会对从业人员和政策制定者产生直接的实用性,并为开放教育资源的不断发展做好准备,迎接新分类标准的到来。我们公开发布了预训练的美国共同核心和新分类法标记模型,为它们在各种实际场景中的可行性提供指导。
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
Computers & Education
Computers & Education 工程技术-计算机:跨学科应用
CiteScore
27.10
自引率
5.80%
发文量
204
审稿时长
42 days
期刊介绍: Computers & Education seeks to advance understanding of how digital technology can improve education by publishing high-quality research that expands both theory and practice. The journal welcomes research papers exploring the pedagogical applications of digital technology, with a focus broad enough to appeal to the wider education community.
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