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      Predicting Student Performance Based on Online Study Habits: A Study of Blended Courses

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          Abstract

          Online tools provide unique access to research students' study habits and problem-solving behavior. In MOOCs, this online data can be used to inform instructors and to provide automatic guidance to students. However, these techniques may not apply in blended courses with face to face and online components. We report on a study of integrated user-system interaction logs from 3 computer science courses using four online systems: LMS, forum, version control, and homework system. Our results show that students rarely work across platforms in a single session, and that final class performance can be predicted from students' system use.

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          Temporal Models for Predicting Student Dropout in Massive Open Online Courses

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            Web usage mining for predicting final marks of students that use Moodle courses

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              Predicting MOOC Dropout over Weeks Using Machine Learning Methods

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                Author and article information

                Journal
                15 April 2019
                Article
                1904.07331
                eaf317aa-6e9f-432f-980f-6bda856e0b4e

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Published in the International Conference on Educational Data Mining (EDM 2018)
                cs.CY

                Applied computer science
                Applied computer science

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