Machine learning as a teaching strategy education: A review

Deixy Ximena Ramos Rivadeneira, Javier Alejando Jiménez Toledo
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Abstract

In this article, we present a systematic review of the literature that explores the impact of Machine Learning as a teaching strategy in the educational field. Machine Learning, a branch of artificial intelligence, has gained relevance in teaching and learning due to its ability to personalize education and improve instructional effectiveness. The systematic review focuses on identifying studies investigating how Machine Learning has been used in educational settings. Through a thorough analysis, its impact on various areas related to teaching and learning, including student performance, knowledge retention, and curricular adaptability, is examined. The findings of this review indicate that Machine Learning has proven to be an effective strategy for tailoring instruction to individual student needs. As a result, engagement and academic performance are significantly improved. Furthermore, the review underscores the importance of future research. This future research will enable a deeper understanding of how Machine Learning can optimize education and address current challenges and emerging opportunities in this evolving field. This systematic review provides valuable information for educators, curriculum designers, and educational policymakers. It also emphasizes the continuing need to explore the potential of Machine Learning to enhance teaching and learning in the digital age of the 21st century. 
将机器学习作为教育教学策略:综述
在本文中,我们对文献进行了系统回顾,探讨了机器学习作为一种教学策略在教育领域的影响。机器学习是人工智能的一个分支,由于它能够实现个性化教育并提高教学效果,因此在教学中的应用越来越广泛。本系统性综述侧重于确定调查机器学习在教育环境中应用情况的研究。通过全面分析,研究了机器学习对教学相关各领域的影响,包括学生成绩、知识保留和课程适应性。综述结果表明,机器学习已被证明是一种有效的策略,可根据学生的不同需求进行定制教学。因此,学生的参与度和学习成绩都得到了显著提高。此外,本综述还强调了未来研究的重要性。未来的研究将使人们更深入地了解机器学习如何优化教育,以及如何应对这一不断发展的领域当前面临的挑战和新出现的机遇。本系统综述为教育工作者、课程设计者和教育政策制定者提供了宝贵的信息。它还强调,在 21 世纪的数字时代,仍有必要继续探索机器学习在提高教学质量方面的潜力。
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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