Pre-Publicación
Dropout-permanence analysis of university students using data mining
Registro en:
Corporación Universidad de la Costa
REDICUC - Repositorio CUC
Autor
amelec, viloria
Martínez Sierra, David
García Samper, Martha
Cadavid Basto, Wilmer Orlando
Roncallo Pichón, Alberto
Hernández Palma, Hugo
Diago, Victoria
J. Kamatkar, Sadhana
Institución
Resumen
Dropout is a rejection method present in every educational system,
related to the various selection processes, academic performance, and the efficiency of the system in general, that is, the result of the combination and effect
of different variables. In this sense, the dropout of university students related to
their academic performance is a matter of concern since several years ago.
Academic information is analyzed in order to identify factors that influence
students´ dropout at the University of Mumbai, India, by using a data mining
technique. The data source contains information provided to the entrance
(personal and educational background) and that is generated during the study
period. The data selection and cleansing are made using different criteria of
representation and implementation of classification algorithms such as decision
trees, Bayesian networks, and rules. the following factors are identified as
influential variables in the desertion: approved courses, quantity and results of
attended courses, origin and age of entry of the student. Through this process, it
was possible to identify the attributes that characterize the dropout cases and
their relationship with the academic performance, especially in the first year of
the career.