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Predicting degree-completion time with data mining

机译:通过数据挖掘预测完成度的时间

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Data mining in academic databases nowadays used for analyzing patterns and gaining new useful knowledge. This paper tries to predict the degree-completion time of bachelor's degree students using data mining technique and algorithms especially C4.5 and naive Bayes classifier algorithm, and measure the algorithms accuracy, precision, and recall percentages for both algorithms also exploring some factors that assume in theory have some impact on the model. The result from given dataset to build the models shows that C4.5 algorithm better than naive Bayes classifier algorithm with 78% accuracy, 85% weighted mean class precision, and 65% weighted mean class recall. This research can be expanded with different data mining algorithms or other related attributes that have some effects to the degree-completion time.
机译:如今,学术数据库中的数据挖掘用于分析模式并获得新的有用知识。本文尝试使用数据挖掘技术和算法(尤其是C4.5和朴素贝叶斯分类器算法)预测学士学位学生的学位完成时间,并测量两种算法的算法准确性,准确性和召回率,并探索一些假设因素理论上对模型有一定影响。从给定的数据集建立模型的结果表明,C4.5算法优于朴素贝叶斯分类器算法,其准确度为78%,加权平均分类精度为85%,加权平均分类召回率为65%。可以使用不同的数据挖掘算法或其他对完成度时间有影响的相关属性来扩展此研究。

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