Automatic engagement estimation in smart education/learning settings: a systematic review of engagement definitions, datasets, and methods.

IF 6.7 Q1 EDUCATION & EDUCATIONAL RESEARCH
Smart Learning Environments Pub Date : 2022-01-01 Epub Date: 2022-11-12 DOI:10.1186/s40561-022-00212-y
Shofiyati Nur Karimah, Shinobu Hasegawa
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引用次数: 0

Abstract

Background: Recognizing learners' engagement during learning processes is important for providing personalized pedagogical support and preventing dropouts. As learning processes shift from traditional offline classrooms to distance learning, methods for automatically identifying engagement levels should be developed.

Objective: This article aims to present a literature review of recent developments in automatic engagement estimation, including engagement definitions, datasets, and machine learning-based methods for automation estimation. The information, figures, and tables presented in this review aim at providing new researchers with insight on automatic engagement estimation to enhance smart learning with automatic engagement recognition methods.

Methods: A literature search was carried out using Scopus, Mendeley references, the IEEE Xplore digital library, and ScienceDirect following the four phases of the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA): identification, screening, eligibility, and inclusion. The selected studies included research articles published between 2010 and 2022 that focused on three research questions (RQs) related to the engagement definitions, datasets, and methods used in the literature. The article selection excluded books, magazines, news articles, and posters.

Results: Forty-seven articles were selected to address the RQs and discuss engagement definitions, datasets, and methods. First, we introduce a clear taxonomy that defines engagement according to different types and the components used to measure it. Guided by this taxonomy, we reviewed the engagement types defined in the selected articles, with emotional engagement (n = 40; 65.57%) measured by affective cues appearing most often (n = 38; 57.58%). Then, we reviewed engagement and engagement-related datasets in the literature, with most studies assessing engagement with external observations (n = 20; 43.48%) and self-reported measures (n = 9; 19.57%). Finally, we summarized machine learning (ML)-based methods, including deep learning, used in the literature.

Conclusions: This review examines engagement definitions, datasets and ML-based methods from forty-seven selected articles. A taxonomy and three tables are presented to address three RQs and provide researchers in this field with guidance on enhancing smart learning with automatic engagement recognition. However, several key challenges remain, including cognitive and personalized engagement and ML issues that may affect real-world implementations.

智能教育/学习环境中的自动参与度估计:参与度定义、数据集和方法的系统综述
背景:认识到学习者在学习过程中的参与对于提供个性化的教学支持和防止辍学是重要的。随着学习过程从传统的线下课堂转向远程学习,应该开发自动识别参与程度的方法。目的:本文旨在对自动参与评估的最新发展进行文献综述,包括参与定义、数据集和基于机器学习的自动化评估方法。本文提供的信息、图表和表格旨在为新的研究人员提供有关自动参与评估的见解,从而通过自动参与识别方法增强智能学习。方法:使用Scopus、Mendeley参考文献、IEEE explore数字图书馆和ScienceDirect进行文献检索,按照系统评价和元分析首选报告项目(PRISMA)的四个阶段进行检索:鉴定、筛选、合格和纳入。所选研究包括2010年至2022年间发表的研究文章,重点关注与敬业度定义、数据集和文献中使用的方法相关的三个研究问题(rq)。文章选择不包括书籍、杂志、新闻文章和海报。结果:选择了47篇文章来解决rq并讨论敬业度定义、数据集和方法。首先,我们引入了一个清晰的分类法,根据不同的类型和用于度量敬业度的组件定义敬业度。在这种分类的指导下,我们回顾了选定文章中定义的投入类型,其中情感投入(n = 40;65.57%),情感线索出现频率最高(n = 38;57.58%)。然后,我们回顾了文献中的敬业度和敬业度相关数据集,大多数研究评估了外部观察的敬业度(n = 20;43.48%)和自我报告措施(n = 9;19.57%)。最后,我们总结了文献中使用的基于机器学习(ML)的方法,包括深度学习。结论:本综述从47篇精选文章中考察了敬业度定义、数据集和基于ml的方法。提出了一个分类和三个表来解决这三个rq,并为该领域的研究人员提供了通过自动参与识别增强智能学习的指导。然而,仍然存在一些关键挑战,包括可能影响现实世界实现的认知和个性化参与以及ML问题。
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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来源期刊
Smart Learning Environments
Smart Learning Environments Social Sciences-Education
CiteScore
13.20
自引率
2.10%
发文量
29
审稿时长
19 weeks
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