Covid-19 大流行对学生学习风格的影响:教育中的奈伊夫贝叶斯和决策树分类法

Zaqi Kurniawan, Rizka Tiaharyadini
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引用次数: 0

摘要

Covid-19 大流行极大地改变了教育,拉近了社会距离,改变了学习环境。在本研究中,研究意义的一个重要原因是 Covid-19 大流行期间学生学习方式变化的紧迫性。调查大流行之前和期间学习风格的差异,不仅能深入了解学生对这些变化的适应情况,还能为今后制定更具包容性和适应性的学习策略奠定基础。本研究旨在分析 Covid-19 大流行对教育背景下学生学习风格的影响,重点是比较 Naïve Bayes 和决策树两种分类方法。本研究通过收集 Covid-19 大流行之前和期间学生学习风格的数据,使用各种相关指标。这些数据基于学校调查结果和网络平台,涉及学生特征和学习偏好。然后使用奈伊夫贝叶斯和决策树分类方法对数据进行分析,以确定学生学习风格的显著变化。结果显示,奈伊夫贝叶斯对学习风格变化的预测准确率为 68.75%,决策树为 87.50%。对教育工作者和教育政策制定者的建议是制定包容性和适应性学习策略,以满足不同的学习偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of The Covid-19 Pandemic on Student Learning Styles: Naïve Bayes and Decision Tree Classification in Education
The Covid-19 pandemic significantly changed education with social distancing and changes in the learning environment. In this study, one strong reason for the significance of the research is the urgency of changes in students' learning styles during the Covid-19 pandemic. Investigating differences in learning styles before and during the pandemic not only provides deep insight into students' adaptation to these changes, but also provides a foundation for the development of more inclusive and adaptive learning strategies in the future. This study aims to analyze the effect of the Covid-19 pandemic on students' learning styles in an educational context, focusing on the comparison of two classification methods, Naïve Bayes and Decision Tree. The study was conducted by collecting data on students' learning styles before and during the Covid-19 pandemic, using various relevant indicators. The data was obtained based on school survey results and online platforms, involving student characteristics and learning preferences. The data was then analyzed using Naïve Bayes and Decision Tree classification methods to identify significant changes in students' learning styles. The results showed the prediction accuracy of learning style changes with Naïve Bayes 68.75% and Decision Tree 87.50%. Recommendations for educators and education policy makers are to develop inclusive and adaptive learning strategies to meet diverse learning preferences. 
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