Student academic performance and social behavior predictor using data mining techniques

Suhas Athani, Sharath A Kodli, Mayur N Banavasi, P. Hiremath
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引用次数: 21

Abstract

Education can be utilized as a tool to face many problems, overcome many hurdles in life. The knowledge obtained from education helps to enhance opportunities in one's employment development. To extract useful information from the knowledge obtained, Educational Data Mining is widely used. Educational data mining provides the process of applying different data mining tools and techniques to analyze and visualize the data of an institution (school) and can be used to discover a unique pattern of students' academic performance and behavior. The present work intends to enhance students' academic performance in secondary school using data mining techniques. Real data was collected using school reports and questionnaire method by the Portugal school which has been used in this paper. Naive Bayesian algorithm can be easily implemented to predict the students' academic performance and behavior. Classification of students into two classes, pass and fail, involves training phase and testing phase. In training phase, Naive Bayes classifier is built and in the testing phase, Naive Bayes classifier is used to make the prediction. The accuracy of the classifier is calculated using WEKA tool in which confusion matrix is generated. The accuracy of the classifier obtained is 87% which can be further improved by the selection of appropriate attributes. Developing the classification algorithms in this way helps to obtain a more efficient student performance predictor tool using other data mining algorithms and it also helps to improve the quality of education in an educational institution.
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利用数据挖掘技术预测学生学习成绩和社会行为
教育可以作为一种工具来面对许多问题,克服生活中的许多障碍。从教育中获得的知识有助于增加就业发展的机会。为了从获得的知识中提取有用的信息,教育数据挖掘得到了广泛的应用。教育数据挖掘提供了应用不同的数据挖掘工具和技术来分析和可视化一个机构(学校)的数据的过程,可以用来发现学生的学习成绩和行为的独特模式。本研究旨在利用数据挖掘技术来提高中学生的学习成绩。本文采用的葡萄牙学校采用学校报告和问卷调查法收集真实数据。朴素贝叶斯算法可以很容易地实现对学生学习成绩和行为的预测。将学生分为及格和不及格两类,包括培训阶段和测试阶段。在训练阶段,建立朴素贝叶斯分类器,在测试阶段,使用朴素贝叶斯分类器进行预测。使用WEKA工具计算分类器的准确率,并生成混淆矩阵。得到的分类器准确率为87%,通过选择合适的属性可以进一步提高分类器的准确率。以这种方式开发分类算法有助于使用其他数据挖掘算法获得更有效的学生成绩预测工具,也有助于提高教育机构的教育质量。
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