Paper Title :Predicting Student Attrition using Data Mining Predictive Models
Author :Mariacrystal E. Orozco, Jasminde Castro – Niguidula
Article Citation :Mariacrystal E. Orozco ,Jasminde Castro – Niguidula ,
(2018 ) " Predicting Student Attrition using Data Mining Predictive Models " ,
International Journal of Advance Computational Engineering and Networking (IJACEN) ,
pp. 34-40,
Volume-6, Issue-2
Abstract : This paper demonstrates how educational data mining can help institution in decision-making specifically to reduce
student attrition. Phases of CRISP-DM (Cross Industry Standard Process for Data Mining) methodologyare followed in
order to determine students at-risk of dropping out after the first semester in their freshmen year. Predictive models namely,
decision tree, naïve bayes, and rule induction were built and applied to process the data set. Subsequently, these models were
tested for accuracy using 10-fold cross validation. Results show that, given sufficient data and appropriate variables, these
models are capable of predicting freshmen attrition with roughly 80% accuracy. Moreover, the average grades of the students
can be used as predictor in determining student attrition unlike the gender attribute that yielded no significant result.
Keywords - Student attrition, Cross industry standard process-data mining, Decision tree, Rule induction, Naïve bayes,
Type : Research paper
Published : Volume-6, Issue-2
DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-11209
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Copyright: © Institute of Research and Journals
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Published on 2018-04-12 |
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