Using XG Boost and Random Forest Classifier Algorithms to Predict Student Behavior

Ha Thi The Nguyen, Ling-Hsiu Chen, Vani Suthamathi Saravanarajan, H. Pham
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引用次数: 1

Abstract

Students study in an online environment, the problems relate to reaction based on evaluation of student’s performance and students’ skills to understand the student behavior. In this paper, for students in an online environment, techniques for connecting the students’ skills and the online reactions about behavior via their evaluation are considered. An example about students from a Brazilian University of an introductory class of Algorithms for explorative data analysis is applied, an instrument for XGBoost analysis and RandomForestClassifier. A base for evaluation of student achievement is the analysis of behavior. This idea is based on studies that discussed the use of social features in the actual classroom of the project.
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使用XG Boost和随机森林分类器算法预测学生行为
学生在网络环境中学习,问题涉及基于对学生表现的评价和学生理解学生行为的技能的反应。在本文中,对于在线环境中的学生,考虑了通过他们的评估将学生的技能与在线对行为的反应联系起来的技术。本文以巴西一所大学的学生为例,介绍了探索性数据分析的算法,XGBoost分析和RandomForestClassifier的工具。评价学生成绩的基础是对行为的分析。这个想法是基于研究,讨论了在实际的课堂上使用社交功能的项目。
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