在K-12背景下引入机器学习的资源调查

I. T. Sanusi, S. Oyelere, J. Agbo, Jarkko Suhonen
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引用次数: 7

摘要

向K-12学生教授机器学习的好处包括建立基本技能、有用的心智模型,并激励下一代人工智能研究人员和软件开发人员。然而,将机器学习引入学校一直是一个挑战,尽管存在一些倡议,课程设计,平台,项目和工具来揭开这个概念的神秘面纱。现有资源分散,有时重叠。因此,在教学中选择合适的工具成为教师和其他实践者的一项艰巨任务。更重要的是,尽管在这一领域发表的论文越来越多,但在确定K-12设置中教授机器学习的特定工具和资源方面仍然存在差距。本研究通过选择2010年至2021年发表的文章,对K-12中的机器学习进行了文献综述。因此,本文提供了一个资源目录和工具调查,以帮助教师找到合适的教学路径,并决定引入帮助学生理解机器学习基本概念的活动。基于研究目的,我们利用6个数据库提取相关信息,并通过系统文献检索收集39篇同行评议文章进行分析。本研究将资源、工具和教学方法确定为确保在K-12环境中进行有效的机器学习教学所需的主要教学项目类别。此外,在K-12课程中,机器学习教学工具的运作模式、好处和挑战也得到了揭示。调查结果还显示,越来越多的举措导致了支持机器学习教学的工具开发。最后,本研究为未来的研究方向提供了建议,以帮助教育部门的研究人员、政策制定者和实践者识别和应用各种资源来帮助实践中的决策,并使学校的机器学习实践民主化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of Resources for Introducing Machine Learning in K-12 Context
The benefits of teaching machine learning to K-12 pupils include building foundational skills, useful mental models and inspire the next generation of AI researchers and software developers. However, introducing machine learning in schools has been a challenge even though several initiatives, curriculum design, platforms, projects, and tools exist to demystify the concept. The existing resources are scattered and sometimes overlap. Thereby selecting the appropriate tools to adopt in teaching becomes an arduous task for the teachers and other practitioners. More so, despite the increasing number of papers published in this field, there are still gaps in identifying specific tools and resources for teaching machine learning in K-12 settings. This study presents a literature review on machine learning in K-12 by selecting articles published from 2010 to 2021. Therefore, this paper presents a resource catalog and surveys of tools to help teachers find suitable teaching paths and make the decision to introduce activities that help students understand the basic concepts of machine learning. Based on the research objective, we utilized six databases to extract relevant information, while thirty-nine peer-reviewed articles were collected based on a systematic literature search and were analyzed. This study identified resources, tools, and instructional methods as the main categories of pedagogical items needed to ensure impactful teaching of machine learning in K-12 settings. Besides, the mode of operation, benefits and the challenges of the pedagogical tools for teaching machine learning in K-12 settings were unraveled. The findings also show the increased number of initiatives resulting in tools development to support machine learning teaching. Finally, this study provides recommendations for future research directions to help researchers, policymakers, and practitioners in the education sector identify and apply various resources to aid decision-making in practice and to democratize machine learning practices in schools.
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