Title :
Student Dropout Predictive Model Using Data Mining Techniques
Author :
Heredia, D. ; Amaya, Y. ; Barrientos, E.
Author_Institution :
Univ. Francisco de Paula Santander, Ocana, Colombia
Abstract :
Data mining allows discover hidden information in large amounts of data, which is very difficult to visualize with traditional process. This topic of computer science permits manipulation and classification of huge amounts of data. C4.5 and ID3 decision tree, for example, have been proven to be efficient for specific prediction cases. This article shows the construction of a predictive model of student dropout, characterizing students at the University Simón Bolívar in order to predict the probability that a student drop out his/her an academic program, by means of two data mining techniques and comparison of results. To create the model was used WEKA that allows multiple and efficient tools for data processing.
Keywords :
data mining; educational administrative data processing; educational institutions; pattern classification; University Simón Bolívar; WEKA; academic program; data classification; data manipulation; data mining technique; data processing; hidden information discovery; student dropout predictive model; Bayes methods; Biological neural networks; Data mining; Data models; Decision trees; Predictive models; Yttrium; Data Mining; Student dropout; Students; predictive model;
Journal_Title :
Latin America Transactions, IEEE (Revista IEEE America Latina)
DOI :
10.1109/TLA.2015.7350068