2021
DOI: 10.28945/4835
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Using Educational Data Mining to Predict Students’ Academic Performance for Applying Early Interventions

Abstract: Aim/Purpose: One of the main objectives of higher education institutions is to provide a high-quality education to their students and reduce dropout rates. This can be achieved by predicting students’ academic achievement early using Educational Data Mining (EDM). This study aims to predict students’ final grades and identify honorary students at an early stage. Background: EDM research has emerged as an exciting research area, which can unfold valuable knowledge from educational databases for many purposes, … Show more

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Cited by 28 publications
(22 citation statements)
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“…The diagnosis rate and prediction accuracy of the system were evaluated by comparing them with those of other studies [1,25,31,[40][41][42][43][44]. The results verified that the proposed ANFIS predictor is an improvement over other methods.…”
Section: Discussionmentioning
confidence: 64%
“…The diagnosis rate and prediction accuracy of the system were evaluated by comparing them with those of other studies [1,25,31,[40][41][42][43][44]. The results verified that the proposed ANFIS predictor is an improvement over other methods.…”
Section: Discussionmentioning
confidence: 64%
“…Além disso, constatou-se que atributos relacionados às atividades escolares são mais preditores para o desempenho dos alunos. Alturki (2021) utiliza a MDE para conceber modelos para a predição dos conceitos finais dos alunos (categorizadas nos conceitos Excelente, Muito Bom, Bom, Aceitável e Insuficiente) e identificar os alunos 'honorários' (com desempenho promissor) em um estágio inicial. É utilizado como atributo pré-matrícula o percentual de desempenho no ensino médio, e como atributos pós matrículas são utilizados a média cumulativa do aluno dos 4 primeiros semestres letivos, carga horária, número de reprovações e notas em disciplinas básicas do curso.…”
Section: Trabalhos Relacionadosunclassified
“…The authors of Alturki and Alturki (2021) use six data mining methods for predicting students' final grades and identifying honorary students during the first 4 semesters of their study journey. Random Forest performed the best accuracy of 92.6% in predicting honorary students.…”
Section: Related Workmentioning
confidence: 99%