The conference is organised annually by the society f To achieve this, we study four datasets from three courses, and compare the performance of two approaches for building models for predicting who are likely to drop out. We proposed a student's dropout prediction model using an intuitionistic fuzzy set and an xgboost algorithm called stou2pm The system that collected student datasets from 2012 to 2022 consisted of approximately 268,763 instances and was prepared to build an accurate prediction model. We report associations between our prediction and academic outcomes, prompting scrutiny of discrepancies between credit hour designation and course load prediction at the course level. Mooc dropout prediction using machine learning techniques
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