2024
DOI: 10.3389/fdata.2024.1449572
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Predicting student self-efficacy in Muslim societies using machine learning algorithms

Mohammed Ba-Aoum,
Mohammed Alrezq,
Jyotishka Datta
et al.

Abstract: IntroductionSelf-efficacy is a critical determinant of students' academic success and overall life outcomes. Despite its recognized importance, research on predictors of self-efficacy using machine learning models remains limited, particularly within Muslim societies. This study addresses this gap by leveraging advanced machine learning techniques to analyze key factors influencing students' self-efficacy.MethodsAn empirical dataset collected was used to examine self-efficacy among secondary school students in… Show more

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