Multimodal Fast-Slow Neural Network for learning engagement evaluation

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Lizhao Zhang, Jui-Long Hung, Xu Du, Hao Li, Zhuang Hu
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引用次数: 0

Abstract

PurposeStudent engagement is a key factor that connects with student achievement and retention. This paper aims to identify individuals' engagement automatically in the classroom with multimodal data for supporting educational research.Design/methodology/approachThe video and electroencephalogram data of 36 undergraduates were collected to represent observable and internal information. Since different modal data have different granularity, this study proposed the Fast–Slow Neural Network (FSNN) to detect engagement through both observable and internal information, with an asynchrony structure to preserve the sequence information of data with different granularity.FindingsExperimental results show that the proposed algorithm can recognize engagement better than the traditional data fusion methods. The results are also analyzed to figure out the reasons for the better performance of the proposed FSNN.Originality/valueThis study combined multimodal data from observable and internal aspects to improve the accuracy of engagement detection in the classroom. The proposed FSNN used the asynchronous process to deal with the problem of remaining sequential information when facing multimodal data with different granularity.
多模态快慢神经网络学习投入评价
学生参与是影响学生成绩和留存率的关键因素。本文旨在利用多模态数据自动识别个人在课堂上的参与度,以支持教育研究。设计/方法/方法收集了36名大学生的视频和脑电图数据,以代表可观察的和内部的信息。由于不同的模态数据具有不同的粒度,本研究提出了快慢神经网络(Fast-Slow Neural Network, FSNN)通过可观察信息和内部信息来检测啮合,并采用异步结构来保留不同粒度数据的序列信息。实验结果表明,该算法比传统的数据融合方法能更好地识别交战状态。对实验结果进行了分析,找出了FSNN性能较好的原因。原创性/价值本研究结合了来自可观察和内部方面的多模态数据,以提高课堂投入检测的准确性。所提出的FSNN采用异步处理的方法来处理面对不同粒度的多模态数据时的顺序信息保留问题。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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