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Autori principali: Esquivel, Joseph A., Esquivel, James A.
Natura: Preprint
Pubblicazione: 2021
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Accesso online:https://arxiv.org/abs/2108.07690
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author Esquivel, Joseph A.
Esquivel, James A.
author_facet Esquivel, Joseph A.
Esquivel, James A.
contents The sudden change in the landscape of Philippine education, including the implementation of K to 12 program, Higher Education institutions, have been struggling in attracting freshmen applicants coupled with difficulties in projecting incoming enrollees. Private HEIs Enrolment target directly impacts success factors of Higher Education Institutions. A review of the various characteristics of freshman applicants influencing their admission status at a Philippine university were included in this study. The dataset used was obtained from the Admissions Office of the University via an online form which was circulated to all prospective applicants. Using Logistic Regression, a predictive model was developed to determine the likelihood that an enrolled student would seek enrolment in the institution or not based on both students and institution's characteristics. The LR Model was used as the algorithm in the development of the Decision Support System. Weka was utilized on selection of features and building the LR model. The DSS was coded and designed using R Studio and R Shiny which includes data visualization and individual prediction.
format Preprint
id arxiv_https___arxiv_org_abs_2108_07690
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle A Machine Learning Based DSS in Predicting Undergraduate Freshmen Enrolment in a Philippine University
Esquivel, Joseph A.
Esquivel, James A.
Computers and Society
The sudden change in the landscape of Philippine education, including the implementation of K to 12 program, Higher Education institutions, have been struggling in attracting freshmen applicants coupled with difficulties in projecting incoming enrollees. Private HEIs Enrolment target directly impacts success factors of Higher Education Institutions. A review of the various characteristics of freshman applicants influencing their admission status at a Philippine university were included in this study. The dataset used was obtained from the Admissions Office of the University via an online form which was circulated to all prospective applicants. Using Logistic Regression, a predictive model was developed to determine the likelihood that an enrolled student would seek enrolment in the institution or not based on both students and institution's characteristics. The LR Model was used as the algorithm in the development of the Decision Support System. Weka was utilized on selection of features and building the LR model. The DSS was coded and designed using R Studio and R Shiny which includes data visualization and individual prediction.
title A Machine Learning Based DSS in Predicting Undergraduate Freshmen Enrolment in a Philippine University
topic Computers and Society
url https://arxiv.org/abs/2108.07690