Predicting effect on student s enrollment in higher education using data mining techniques
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Abstract
The enrollment trends in higher education institutions play a pivotal role in
newlineshaping educational policies and resource allocation. This research focuses on
newlinepredicting the effects on student enrollment in universities in Haryana, India,
newlineutilizing data mining techniques. We have collected extensive data from various
newlineuniversities in Haryana, encompassing a wide array of variables that influence
newlineenrollment.
newlineOur research employs a two-step approach to analyze and predict student
newlineenrollment. Firstly, we conduct descriptive analysis using IBM SPSS Statistics
newlineto gain insights into the data, identify trends, and understand the key factors
newlineaffecting enrollment. Subsequently, we employ machine learning algorithms
newlineand prediction models, utilizing the Weka toolset. To predict student enrollment
newlineaccurately, we evaluate the performance of multiple classifiers, including J48,
newlineJRIP, IBK, and Naive Bayes. These classifiers enable us to capture the complex
newlinerelationships within the data and make precise enrollment forecasts.
newlineFurthermore, we construct an ensemble model that combines the strengths of
newlinethese classifiers, achieving an impressive prediction accuracy of 93.22%. This
newlineresearch contributes to the field of education by providing a robust predictive
newlinemodel that can assist educational institutions and policymakers in making
newlineinformed decisions regarding resource allocation, capacity planning, and other
newlinecritical aspects related to student enrollment management. Additionally, it
newlinehighlights the potential of data mining techniques in improving the
newlineunderstanding and management of enrollment dynamics in higher education
newlineinstitutions.
newline