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Predictive Model Using a Machine Learning Approach for Enhancing the Retention Rate of Students At-Risk

Hani Brdesee, Wafaa Alsaggaf, Naif Radi Aljohani, Saeed‐Ul Hassan

2022International Journal on Semantic Web and Information Systems51 citationsDOIOpen Access PDF

Abstract

Student retention is a widely recognized challenge in the educational community to assist the institutes in the formation of appropriate and effective pedagogical interventions. This study intends to predict the students at-risk of low performances during an on-going course, those at-risk of graduating late than the tentative timeline and predicting the capacity of students in a campus. The data constitutes of demographics, learning, academic and educational related attributes which are suitable to deploy various machine learning algorithms for the prediction of at-risk students. For class balancing, Synthetic Minority Over Sampling Technique, is also applied to eliminate the imbalance in the academic award-gap performances and late/timely graduates. Results reveal the effectiveness of the deployed techniques with Long short-term Memory (LSTM) outperforming other models for early prediction of at-risk students. The main contribution of this work is a machine learning approach capable of enhancing the academic decision making related to student performance.

Topics & Concepts

TimelineComputer scienceMachine learningDemographicsArtificial intelligencePsychological interventionAt-risk studentsClass (philosophy)Data scienceMathematics educationPsychologyArchaeologyPsychiatryDemographyHistorySociologyOnline Learning and AnalyticsImbalanced Data Classification TechniquesArtificial Intelligence in Healthcare