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Comparative analysis of classification methods in determining non-active student characteristics in Indonesia Open University

机译:印度尼西亚公开大学确定非活动学生特征的分类方法比较分析

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摘要

Classification is a data mining technique that aims to discover a model from training data that distinguishes records into appropriate classes. Classification methods can be applied in education, to classify non-active students in higher education programs based on their characteristics. This paper presents a comparison of three classification methods: Naive Bayes, Bagging, and C4.5. The criteria used to evaluate performance of three classifiers are stratified cross-validation, confusion matrix, ROC curve, recall, precision, and F-measure. The data used for this paper are non-active students in Indonesia Open University (IOU) for the period of 2004-2012. The non-active students were divided into three groups: non-active students in the first three years, non-active students in first five years, and non-active students over five years. Results of the study show that the Bagging method provided a higher accuracy than Naive Bayes and C4.5. The accuracy of bagging classification is 82.99%, while the Naive Bayes and C4.5 are 80.04% and 82.74%, respectively. The classification tree resulted from the Bagging method has a large number of nodes, so it is quite difficult to use in decision-making. For that, the C4.5 tree is used to classify non-active students in IOU based in their characteristics.
机译:分类是一种数据挖掘技术,旨在从训练数据中发现一个模型,该模型将记录分为适当的类。可以将分类方法应用于教育中,以便根据高等教育程序中的非活动学生的特征对其进行分类。本文对三种分类方法进行了比较:朴素贝叶斯,袋装和C4.5。评估三个分类器性能的标准是分层交叉验证,混淆矩阵,ROC曲线,召回率,精度和F量度。本文所使用的数据是印度尼西亚公开大学(IOU)2004-2012年期间的非活跃学生。非活动学生分为三组:前三年的非活动学生,头五年的非活动学生和五年的非活动学生。研究结果表明,套袋法比Naive Bayes和C4.5的准确性更高。套袋分类的准确性为82.99%,而朴素贝叶斯和C4.5分别为80.04%和82.74%。 Bagging方法产生的分类树具有大量节点,因此很难在决策中使用。为此,使用C4.5树根据其特征对IOU中的非活跃学生进行分类。

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