Systematic Literature Review on Pedagogies and Visualization Tools for Machine Learning in K-12 Schools

Adjei Amaniampong, S. Oyelere
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Abstract

Though studies have been done on Machine  Learning, almost all the studies focused on higher educational institutions, with little attention to K-12 educational settings. Those studies that focused on K-12 are scattered, making it difficult to specifically know which visualization tools best enhance Machine Learning in K-12 schools. This study, therefore, through a systematic literature review determines which visualization tools best promote Machine Learning in K-12 schools. The study specifically considered, barriers to the use of Machine Learning in K-12 schools,  visualization tools for Machine Learning in K-12 schools, and pedagogical strategies that benefit the teaching and learning of Machine Learning in K-12 schools. The study sourced articles from Scopus and the Web of Science database after applying the inclusion and exclusion criteria. Data from the articles were extracted based on the PICO framework and their quality was assessed using the Critical Appraisal Skills Programme (CASP) model. The barriers to Machine Learning in K-12 schools include a lack of information about the development and usage of the tools, selection, and coordination barriers, lack of attention to machine learning by educational stakeholders, and programming demands.  Appropriate visualization tools for Machine Learning in K-12 schools include  MLflow and NN-SVG. Though there exist numerous approaches for teaching ML in K-12 settings such as active learning, inquiry-based, participatory learning, and design-oriented approaches, the best pedagogy that supports machine learning in K-12 schools as per existing literature is participatory learning. Teachers need to acquire the appropriate and specific information and technical know-how or skills about machine learning for promoting visualization lessons in K-12 schools. All teachers should be sensitized to adopt participatory learning pedagogy to enhance the effective use of machine learning in K-12 schools.  Machine learning should be integrated into teaching and learning in K-12 schools since it is ideal for visualization and experimentation, which are inevitable for effective teaching and learning in K-12 schools.
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关于 K-12 学校机器学习教学法和可视化工具的系统文献综述
虽然对机器学习进行了研究,但几乎所有的研究都集中在高等教育机构,很少关注 K-12 教育环境。那些关注 K-12 教育环境的研究比较分散,因此很难具体了解哪些可视化工具最能促进 K-12 学校的机器学习。因此,本研究通过系统的文献回顾,确定了哪些可视化工具最能促进 K-12 学校的机器学习。研究特别考虑了在 K-12 学校中使用机器学习的障碍、K-12 学校中机器学习的可视化工具,以及有利于 K-12 学校中机器学习教学的教学策略。研究采用了纳入和排除标准,从 Scopus 和 Web of Science 数据库中获取文章。根据 PICO 框架提取了文章中的数据,并使用批判性评估技能计划(CASP)模型对其质量进行了评估。在 K-12 学校开展机器学习的障碍包括缺乏有关工具开发和使用的信息、选择和协调障碍、教育利益相关者对机器学习缺乏关注以及编程需求。 适用于 K-12 学校机器学习的可视化工具包括 MLflow 和 NN-SVG。尽管在 K-12 环境中存在许多教授机器学习的方法,如主动学习法、探究式学习法、参与式学习法和设计导向法,但根据现有文献,支持 K-12 学校机器学习的最佳教学法是参与式学习法。教师需要获得有关机器学习的适当而具体的信息和技术诀窍或技能,以便在K-12学校推广可视化课程。应提高所有教师对采用参与式学习教学法的认识,以加强机器学习在K-12学校中的有效应用。 机器学习是可视化和实验的理想工具,而可视化和实验是K-12学校有效教学的必然选择,因此应将机器学习融入K-12学校的教学中。
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