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arxiv: 1809.06686 · v3 · pith:HDSXRUB5new · submitted 2018-09-07 · 💻 cs.CY · cs.LG· stat.ML

Domain Adaptation for Real-Time Student Performance Prediction

classification 💻 cs.CY cs.LGstat.ML
keywords courseperformancepredictionreal-timestudentstudentsadaptationdomain
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Increasingly fast development and update cycle of online course contents, and diverse demographics of students in each online classroom, make student performance prediction in real-time (before the course finishes) and/or on curriculum without specific historical performance data available interesting topics for both industrial research and practical needs. In this research, we tackle the problem of real-time student performance prediction with on-going courses in a domain adaptation framework, which is a system trained on students' labeled outcome from one set of previous coursework but is meant to be deployed on another. In particular, we first introduce recently-developed GritNet architecture which is the current state of the art for student performance prediction problem, and develop a new \emph{unsupervised} domain adaptation method to transfer a GritNet trained on a past course to a new course without any (students' outcome) label. Our results for real Udacity students' graduation predictions show that the GritNet not only \emph{generalizes} well from one course to another across different Nanodegree programs, but enhances real-time predictions explicitly in the first few weeks when accurate predictions are most challenging.

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