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Analysis of Students' Misconducts in Higher Education using Decision Tree and ANN Algorithms

机译:学生使用决策树和ANN算法分析高等教育中的不当行为

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A major problem that the Higher Education Institutions (HEIs) face is the misconduct of students’ behavior. The objective of this study is to decrease these misconducts by identifying the factors which cause them on college campuses. CRISP-DM Methodology has been applied to manage the process of data mining and two data mining techniques: J48 Decision Tree (DT) and Artificial Neural Networks (ANNs) have been used to build classification models and to generate rules to classify and predict students' behavior and the location of misconduct in college campuses. They take into consideration seven factors: Student Major, Student Level, Gender, GPA Cumulative, Local Address, Ethnicity, and time of misconduct by month. Both techniques were evaluated and compared. The accuracy results were high for both classification models, whereas the J48 Decision Tree gave higher accuracy.
机译:高等教育机构(HEIS)面临的主要问题是学生行为的不当行为。本研究的目的是通过识别导致他们在大学校园的因素来减少这些不当行为。已经应用了CRISP-DM方法来管理数据挖掘过程和两个数据挖掘技术:J48决策树(DT)和人工神经网络(ANNS)已被用于构建分类模型并生成分类和预测学生的规则大学校园中不当行为的行为和位置。他们考虑了七个因素:学生专业,学生级别,性别,GPA累积,当地地址,种族和不当行为的时间。两种技术都被评估并进行了比较。对于两个分类模型来说,精度结果很高,而J48决策树的准确性更高。

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