Title
A critical assessment of imbalanced class distribution problem: The case of predicting freshmen student attrition
Abstract
Predicting student attrition is an intriguing yet challenging problem for any academic institution. Class-imbalanced data is a common in the field of student retention, mainly because a lot of students register but fewer students drop out. Classification techniques for imbalanced dataset can yield deceivingly high prediction accuracy where the overall predictive accuracy is usually driven by the majority class at the expense of having very poor performance on the crucial minority class. In this study, we compared different data balancing techniques to improve the predictive accuracy in minority class while maintaining satisfactory overall classification performance. Specifically, we tested three balancing techniques-over-sampling, under-sampling and synthetic minority over-sampling (SMOTE)-along with four popular classification methods-logistic regression, decision trees, neuron networks and support vector machines. We used a large and feature rich institutional student data (between the years 2005 and 2011) to assess the efficacy of both balancing techniques as well as prediction methods. The results indicated that the support vector machine combined with SMOTE data-balancing technique achieved the best classification performance with a 90.24% overall accuracy on the 10-fold holdout sample. All three data-balancing techniques improved the prediction accuracy for the minority class. Applying sensitivity analyses on developed models, we also identified the most important variables for accurate prediction of student attrition. Application of these models has the potential to accurately predict at-risk students and help reduce student dropout rates.
Year
DOI
Venue
2014
10.1016/j.eswa.2013.07.046
Expert Syst. Appl.
Keywords
Field
DocType
freshmen student attrition,overall accuracy,support vector machine,minority class,critical assessment,predicting student attrition,prediction accuracy,at-risk student,predictive accuracy,overall predictive accuracy,fewer student,deceivingly high prediction accuracy,imbalanced class distribution problem,prediction,sensitivity analysis,sampling
Student dropout,Data mining,Decision tree,Regression,Computer science,Support vector machine,Artificial intelligence,Sampling (statistics),Drop out,Attrition,Machine learning
Journal
Volume
Issue
ISSN
41
2
0957-4174
Citations 
PageRank 
References 
21
1.26
24
Authors
4
Name
Order
Citations
PageRank
Dech Thammasiri1211.26
Dursun Delen21881180.23
Phayung Meesad321330.96
Nihat Kasap4496.92