Using a Binary Classification Model to Predict the Likelihood of Enrolment to the Undergraduate Program of a Philippine University
Dr.Joseph A. Esquivel, James A. Esquivel

TL;DR
This study develops a logistic regression model to predict undergraduate enrollment likelihood in a Philippine university, aiding resource planning amid incomplete applicant data post-K to 12 implementation.
Contribution
It introduces a predictive enrollment model using logistic regression with limited applicant data, enhancing decision-making for resource allocation in Philippine higher education.
Findings
Significant predictors include geographic and demographic data.
The model can estimate enrollment probabilities with incomplete information.
Machine learning aids resource management in universities.
Abstract
With the recent implementation of the K to 12 Program, academic institutions, specifically, Colleges and Universities in the Philippines have been faced with difficulties in determining projected freshmen enrollees vis-a-vis decision-making factors for efficient resource management. Enrollment targets directly impacts success factors of Higher Education Institutions. This study covered an analysis of various characteristics of freshmen applicants affecting their admission status in a Philippine university. A predictive model was developed using Logistic Regression to evaluate the probability that an admitted student will pursue to enroll in the Institution or not. The dataset used was acquired from the University Admissions Office. The office designed an online application form to capture applicants' details. The online form was distributed to all student applicants, and most often,…
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Taxonomy
TopicsOnline Learning and Analytics · Imbalanced Data Classification Techniques
MethodsLogistic Regression
