论文标题

部分可观测时空混沌系统的无模型预测

Exploring Interactions and Regulations in Collaborative Learning: An Interdisciplinary Multimodal Dataset

论文作者

Li, Yante, Liu, Yang, Nguyen, KhÁnh, Shi, Henglin, Vuorenmaa, Eija, Jarvela, Sanna, Zhao, Guoying

论文摘要

协作学习是一种教育方法,可以通过共享目标和共同努力来增强学习。互动和调节是与协作学习成功有关的两个基本因素。由于来自各种模式的信息可以反映协作的质量,因此在本文中引入了一个具有认知和情感触发器的新的多模式数据集,以探讨法规如何影响协作过程中的相互作用。具体而言,采用有意干预措施的学习任务是平均设计和分配给15岁(n = 81)的高中生。收集和利用多模式信号,包括视频,Kinect,音频和生理数据,以根据个人参与者 - 单程模式,个人参与者 - 媒介 - 媒体模式和多参与者 - 参与者模式模式来研究法规。对注释的情绪,身体手势及其相互作用的分析表明,我们与设计治疗方法的多模式数据集可以有效地检查协作学习中的调节时刻。此外,基于基线模型的初步实验表明,该数据集提供了一个具有挑战性的野外场景,这可以进一步有助于教育和情感计算领域。

Collaborative learning is an educational approach that enhances learning through shared goals and working together. Interaction and regulation are two essential factors related to the success of collaborative learning. Since the information from various modalities can reflect the quality of collaboration, a new multimodal dataset with cognitive and emotional triggers is introduced in this paper to explore how regulations affect interactions during the collaborative process. Specifically, a learning task with intentional interventions is designed and assigned to high school students aged 15 years old (N=81) in average. Multimodal signals, including video, Kinect, audio, and physiological data, are collected and exploited to study regulations in collaborative learning in terms of individual-participant-single-modality, individual-participant-multiple-modality, and multiple-participant-multiple-modality. Analysis of annotated emotions, body gestures, and their interactions indicates that our multimodal dataset with designed treatments could effectively examine moments of regulation in collaborative learning. In addition, preliminary experiments based on baseline models suggest that the dataset provides a challenging in-the-wild scenario, which could further contribute to the fields of education and affective computing.

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