Interactions for Socially Shared Regulation in Collaborative Learning: An Interdisciplinary Multimodal Dataset

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Yante Li, Yang Liu, Andy Nguyen, Henglin Shi, Eija Vuorenmaa, Sanna Järvelä, Guoying Zhao
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Abstract

Socially shared regulation plays a pivotal role in the success of collaborative learning. However, evaluating socially shared regulation of learning (SSRL) proves challenging due to the dynamic and infrequent cognitive and socio-emotional interactions, which constitute the focal point of SSRL. To address this challenge, this paper gathers interdisciplinary researchers to establish a multi-modal dataset with cognitive and socio-emotional interactions for SSRL study. Firstly, to induce cognitive and socio-emotional interactions, learning science researchers designed a special collaborative learning task with regulatory trigger events among triadic people for the SSRL study. Secondly, this dataset includes various modalities like video, Kinect data, audio, and physiological data (accelerometer, EDA, heart rate) from 81 high school students in 28 groups, offering a comprehensive view of the SSRL process. Thirdly, three-level verbal interaction annotations and non-verbal interactions including facial expression, eye gaze, gesture, and posture are provided, which could further contribute to interdisciplinary fields such as computer science, sociology, and education. In addition, comprehensive analysis verifies the dataset’s effectiveness. As far as we know, this is the first multimodal dataset for studying SSRL among triadic group members.
协作学习中的社会共享调节互动:跨学科多模态数据集
社会共同调节在协作学习的成功中起着举足轻重的作用。然而,由于构成社会共享学习调控(SSRL)焦点的认知和社会情感交互是动态的、不频繁的,因此评估社会共享学习调控(SSRL)具有挑战性。为了应对这一挑战,本文汇集了跨学科研究人员,为 SSRL 研究建立了一个包含认知和社会情感互动的多模态数据集。首先,为了诱导认知和社会情感互动,学习科学研究人员设计了一个特殊的协作学习任务,其中包含三体人之间的调节触发事件,用于 SSRL 研究。其次,该数据集包括来自 28 个小组的 81 名高中生的视频、Kinect 数据、音频和生理数据(加速度计、EDA、心率)等各种模式,从而提供了 SSRL 过程的全面视图。第三,提供了三级语言交互注释和非语言交互,包括面部表情、眼睛注视、手势和姿势,这将进一步促进计算机科学、社会学和教育学等跨学科领域的发展。此外,综合分析验证了数据集的有效性。据我们所知,这是第一个用于研究三人小组成员之间 SSRL 的多模态数据集。
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
CiteScore
7.20
自引率
4.30%
发文量
567
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