C4.5算法
朴素贝叶斯分类器
随机森林
教育数据挖掘
关联规则学习
计算机科学
数据挖掘
机器学习
人工智能
支持向量机
作者
Sadiq Hussain,Neama Abdulaziz Dahan,Fadl Mutaher Ba-Alwi,Najoua Ribata
标识
DOI:10.11591/ijeecs.v9.i2.pp447-459
摘要
<p class="Abstract"><span lang="EN-GB">In this competitive scenario of the educational system, the higher education institutes use data mining tools and techniques for academic improvement of the student performance and to prevent drop out. The authors collected data from three colleges of Assam, India. The data consists of socio-economic, demographic as well as academic information of three hundred students with twenty-four attributes. Four classification methods, the J48, PART, Random Forest and Bayes Network Classifiers were used. The data mining tool used was WEKA. The high influential attributes were selected using the tool. The internal assessment attribute in the continuous evaluation process makes the highest impact in the final semester results of the students in our dataset. The results showed that random forest outperforms the other classifiers based on accuracy and classifier errors. Apriori algorithm was also used to find the association rule mining among all the attributes and the best rules were also displayed.<em></em></span></p>
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