Jurnal Pendidikan Progresif
Vol 11, No 3 (2021): Jurnal Pendidikan Progresif

Predicting On-time Graduation based on Student Performance in Core Introductory Computing Courses using Decision Tree Algorithm

Co, Jeffrey (Unknown)
Casillano, Niel Francis (Unknown)



Article Info

Publish Date
30 Dec 2021

Abstract

Objectives: This study primarily aimed at developing a model that will predict whether a student will graduate on time based on their academic performance in their respective core introductory computing courses. Methods: The educational data mining process was employed in the conduct of this research. The process commenced with the collection of educational data and culminated with the evaluation of the developed model. This research utilized the decision tree algorithm. Findings: The model evaluation resulted to an 88.9% classification accuracy where the total number of actual “Yes” (students who graduated on-time) is 52.49 were classified correctly and 3 were misclassified as “No” in the prediction and the total number of actual “No” (students who did not graduated on-time) is 20.15 of which were classified correctly and 5 were misclassified in the prediction. Conclusion: Results of the study can be used as inputs in the crafting of new resource materials and an improved curriculum that will help improve the performance of students in the database management course. The model can also be used as a tool to help students graduate on-time.Keywords: decision tree, prediction, on-time graduation.DOI: http://dx.doi.org/10.23960/jpp.v11.i3.202116

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Journal Info

Abbrev

jpp

Publisher

Subject

Education

Description

urnal Pendidikan Progresif is an academic journal that published all the studies in the areas of education, learning, teaching, curriculum development, learning environments, teacher education, educational technology, educational developments from various types of research such as surveys, research ...