Abstract

Background: Student admission at universities aims to select the best candidates who will excel and finish their studies on time. There are many factors to be considered in student admission. To assist the process, an intelligent model is needed to spot the potentially high achieving students, as well as to identify potentially struggling students as early as possible.Objective: This research uses K-means clustering to predict students’ grade point average (GPA) based on students’ profile, such as high school status and location, university entrance test score and English language competence.Methods: Students’ data from class of 2008 to 2017 are used to create two clusters using K-means clustering algorithm. Two centroids from the clusters are used to classify all the data into two groups: high GPA and low GPA. We use the data from class of 2018 as test data. The performance of the prediction is measured using accuracy, precision and recall.Results: Based on the analysis, the K-means clustering method is 78.59% accurate among the merit-based-admission students and 94.627% among the regular-admission students.Conclusion: The prediction involving merit-based-admission students has lower predictive accuracy values than that of involving regular-admission students because the clustering model for the merit-based-admission data is K = 3, but for the prediction, the assumption is K = 2.

Highlights

  • Students’ admission process is one of the most important aspects in ensuring a higher education institution’s quality

  • Prediction results for the merit-based-admission students can be viewed in Table 10 and 11

  • Based on the training data size, there is no correlation between training data size and prediction accuracy

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Summary

Introduction

Students’ admission process is one of the most important aspects in ensuring a higher education institution’s quality. Be it university, polytechnics or institute, always seek to produce high quality graduates. Private universities often struggle to attract high-achieving students. With applicants from a wide range of background and ability, private universities need to identify their student’s ability in the admission process, as well as in the learning activities so they can provide adequate support when there is difficulty. Student admission at universities aims to select the best candidates who will excel and finish their studies on time. An intelligent model is needed to spot the potentially high achieving students, as well as to identify potentially struggling students as early as possible

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