Adaptive Review for Mobile MOOC Learning via Multimodal Physiological Signal Sensing - A Longitudinal Study

Phuong Pham, Jingtao Wang
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引用次数: 12

Abstract

Despite the great potential, Massive Open Online Courses (MOOCs) face major challenges such as low retention rate, limited feedback, and lack of personalization. In this paper, we report the results of a longitudinal study on AttentiveReview2, a multimodal intelligent tutoring system optimized for MOOC learning on unmodified mobile devices. AttentiveReview2 continuously monitors learners' physiological signals, facial expressions, and touch interactions during learning and recommends personalized review materials by predicting each learner's perceived difficulty on each learning topic. In a 3-week study involving 28 learners, we found that AttentiveReview2 on average improved learning gains by 21.8% in weekly tests. Follow-up analysis shows that multi-modal signals collected from the learning process can also benefit instructors by providing rich and fine-grained insights on the learning progress. Taking advantage of such signals also improves prediction accuracies in emotion and test scores when compared with clickstream analysis.
基于多模态生理信号传感的移动MOOC学习自适应回顾——一项纵向研究
尽管潜力巨大,但大规模在线开放课程(MOOCs)仍面临着留存率低、反馈有限、缺乏个性化等重大挑战。在本文中,我们报告了对AttentiveReview2的纵向研究结果。AttentiveReview2是一个针对未修改的移动设备上的MOOC学习进行优化的多模态智能辅导系统。AttentiveReview2在学习过程中持续监测学习者的生理信号、面部表情和触摸互动,并通过预测每个学习者对每个学习主题的感知难度来推荐个性化的复习材料。在一项涉及28名学习者的为期3周的研究中,我们发现AttentiveReview2在每周测试中平均提高了21.8%的学习成绩。后续分析表明,从学习过程中收集的多模态信号也可以通过提供关于学习进度的丰富而细致的见解而使教师受益。与点击流分析相比,利用这些信号还可以提高对情绪和考试成绩的预测准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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