Low dropout risk CS1 students exhibited three distinct weekly learning strategies while high-risk students showed nine varied patterns, some temporary and recoverable and others signaling imminent dropout.
Predicting Media Literacy Level of Secondary School Students in Fiji
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Machine learning models on student survey data predict media literacy competence, with academic year and prior training as key improving factors.
citing papers explorer
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Understanding Self-Regulated Learning Behavior Among High and Low Dropout Risk Students During CS1: Combining Trace Logs, Dropout Prediction and Self-Reports
Low dropout risk CS1 students exhibited three distinct weekly learning strategies while high-risk students showed nine varied patterns, some temporary and recoverable and others signaling imminent dropout.
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Leveraging Machine Learning Techniques to Investigate Media and Information Literacy Competence in Tackling Disinformation
Machine learning models on student survey data predict media literacy competence, with academic year and prior training as key improving factors.