Learning motivation of college students in multimedia environment with machine learning models

IF 1.7 4区 心理学 Q3 PSYCHOLOGY, BIOLOGICAL
Zhao Qianyi , Liang Zhiqiang
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引用次数: 0

Abstract

As the main force of higher education, ensuring the learning status and quality of college students is undoubtedly an important task in the education industry. Analyzing their learning motivation can provide a good understanding of their learning status. Especially in the new educational environment supported by multimedia technology, efficient and convenient learning channels can eliminate students' concerns about educational facilities and instead strengthen the analysis of learning motivation in other aspects. As part of our comprehensive study of learning motivation, we draw on established learning theories, such as reinforcement theory, associative learning, and self-determination theory. Applying such learning theories encourages positive reinforcement, establishes constructive relationships with learning, and nurtures competence and autonomy. This article believed that using machine learning models to predict students' grades or behaviours and analyze their learning motivation is a good approach. Moreover, this article also tested the prediction accuracy by setting different improved random forest model runs, and concluded that the more runs, the higher the accuracy. Especially when the runs reached 100, the accuracy reached 99.98 %.

利用机器学习模型激发大学生在多媒体环境中的学习动机
作为高等教育的主力军,保证大学生的学习状态和学习质量无疑是教育行业的一项重要任务。分析他们的学习动机,可以很好地了解他们的学习状况。尤其是在以多媒体技术为支撑的新教育环境下,高效便捷的学习渠道可以消除学生对教育设施的顾虑,转而从其他方面加强对学习动机的分析。作为学习动机综合研究的一部分,我们借鉴了已有的学习理论,如强化理论、联想学习和自我决定理论。应用这些学习理论可以鼓励正强化,建立与学习的建设性关系,培养能力和自主性。本文认为,利用机器学习模型预测学生的成绩或行为,分析他们的学习动机是一种很好的方法。此外,本文还通过设置不同的改进随机森林模型运行次数来测试预测的准确性,并得出结论:运行次数越多,准确性越高。特别是当运行次数达到 100 次时,准确率达到了 99.98 %。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
53
期刊介绍: Learning and Motivation features original experimental research devoted to the analysis of basic phenomena and mechanisms of learning, memory, and motivation. These studies, involving either animal or human subjects, examine behavioral, biological, and evolutionary influences on the learning and motivation processes, and often report on an integrated series of experiments that advance knowledge in this field. Theoretical papers and shorter reports are also considered.
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