作者
WF Wan Yaacob, N Mohd Sobri, SA Md Nasir, ND Norshahidi, WZ Wan Husin
发表日期
2020/3/1
期刊
Journal of Physics: Conference Series
卷号
1496
期号
1
页码范围
012005
出版商
IOP Publishing
简介
The increasing number of students dropping out is a major concern of higher educational institutions as it gives a great impact not only cost to the students but also a waste of public funds. Thus, it is imperative to understand which students are at risk of dropping out and what are the factors that contribute to higher dropout rates. This can be done using educational data mining. In this paper, we described the uses of data mining techniques to predict student dropout of Computer Science undergraduate students after 3 years of enrolment in Universiti Teknologi MARA. The experimental results showed an achievable reliable classification accuracy from the selected algorithm in predicting dropouts. Decision tree, logistic regression, random forest, K-nearest neighbour and neural network algorithm were compared to propose the best model. The results showed that some of the machines learning algorithms are able to …
引用总数
202020212022202320241518205
学术搜索中的文章
WFW Yaacob, NM Sobri, SAM Nasir, ND Norshahidi… - Journal of Physics: Conference Series, 2020