Improving prediction of students’ performance in intelligent tutoring systems using attribute selection and ensembles of different multimodal data sources

Volume: 33, Issue: 3, Pages: 614 - 634
Published: Oct 28, 2021
Abstract
The aim of this study was to predict university students’ learning performance using different sources of performance and multimodal data from an Intelligent Tutoring System. We collected and preprocessed data from 40 students from different multimodal sources: learning strategies from system logs, emotions from videos of facial expressions, allocation and fixations of attention from eye tracking, and performance on posttests of domain...
Paper Details
Title
Improving prediction of students’ performance in intelligent tutoring systems using attribute selection and ensembles of different multimodal data sources
Published Date
Oct 28, 2021
Volume
33
Issue
3
Pages
614 - 634
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