Title
Predicting student failure at school using genetic programming and different data mining approaches with high dimensional and imbalanced data
Abstract
Predicting student failure at school has become a difficult challenge due to both the high number of factors that can affect the low performance of students and the imbalanced nature of these types of datasets. In this paper, a genetic programming algorithm and different data mining approaches are proposed for solving these problems using real data about 670 high school students from Zacatecas, Mexico. Firstly, we select the best attributes in order to resolve the problem of high dimensionality. Then, rebalancing of data and cost sensitive classification have been applied in order to resolve the problem of classifying imbalanced data. We also propose to use a genetic programming model versus different white box techniques in order to obtain both more comprehensible and accuracy classification rules. The outcomes of each approach are shown and compared in order to select the best to improve classification accuracy, specifically with regard to which students might fail.
Year
DOI
Venue
2013
10.1007/s10489-012-0374-8
Appl. Intell.
Keywords
DocType
Volume
Predicting student performance,Classification,Educational data mining,Student failure,Grammar-based genetic programming
Journal
38
Issue
ISSN
Citations 
3
0924-669X
36
PageRank 
References 
Authors
1.57
21
4
Name
Order
Citations
PageRank
Carlos Márquez-Vera1653.58
Alberto Cano226918.88
Cristóbal Romero32226148.97
S. Ventura42318158.44