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Analyzing Learners Behavior in MOOCs: An Examination of Performance and Motivation Using a Data-Driven Approach.

, , , and . IEEE Access, (2018)

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Training Neural Networks as Experimental Models: Classifying Biomedical Datasets for Sickle Cell Disease., , , , , , , , and . ICIC (1), volume 9771 of Lecture Notes in Computer Science, page 784-795. Springer, (2016)The Application of Gaussian Mixture Models for the Identification of At-Risk Learners in Massive Open Online Courses., , , , and . CEC, page 1-8. IEEE, (2018)A Data Science Methodology Based on Machine Learning Algorithms for Flood Severity Prediction., , , , , , , and . CEC, page 1-8. IEEE, (2018)Predicting Freezing of Gait in Parkinsons Disease Patients Using Machine Learning., , , , , and . CEC, page 1-8. IEEE, (2018)A Performance Evaluation of Systematic Analysis for Combining Multi-class Models for Sickle Cell Disorder Data Sets., , , , , , , , and . ICIC (2), volume 10362 of Lecture Notes in Computer Science, page 115-121. Springer, (2017)Machine learning approaches to the application of disease modifying therapy for sickle cell using classification models., , , , , , and . Neurocomputing, (2017)Towards the discrimination of primary and secondary headache: An intelligent systems approach., , , , and . IJCNN, page 2768-2775. IEEE, (2017)Towards the Differentiation of Initial and Final Retention in Massive Open Online Courses., , , , and . ICIC (1), volume 10361 of Lecture Notes in Computer Science, page 26-36. Springer, (2017)An Intelligent Systems Approach to Primary Headache Diagnosis., , , , , and . ICIC (2), volume 10362 of Lecture Notes in Computer Science, page 61-72. Springer, (2017)Artificial Intelligence for Detecting Preterm Uterine Activity in Gynecology and Obstetric Care., , , , , , and . CIT/IUCC/DASC/PICom, page 215-220. IEEE, (2015)