Towards Collaborative Convergence: Quantifying Collaboration Quality with Automated Co-located Collaboration Analytics

Sambit Praharaj, Maren Scheffel, Marcel Schmitz, M. Specht, H. Drachsler
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引用次数: 5

Abstract

Collaboration is one of the four important 21st-century skills. With the pervasive use of sensors, interest on co-located collaboration (CC) has increased lately. Most related literature used the audio modality to detect indicators of collaboration (such as total speaking time and turn taking). CC takes place in physical spaces where group members share their social (i.e., non-verbal audio indicators like speaking time, gestures) and epistemic space (i.e., verbal audio indicators like the content of the conversation). Past literature has mostly focused on the social space to detect the quality of collaboration. In this study, we focus on both social and epistemic space with an emphasis on the epistemic space to understand different evolving collaboration patterns and collaborative convergence and quantify collaboration quality. We conduct field trials by collecting audio recordings in 14 different sessions in a university setting while the university staff and students collaborate over playing a board game to design a learning activity. This collaboration task consists of different phases with each collaborating member having been assigned a pre-fixed role. We analyze the collected group speech data to do role-based profiling and visualize it with the help of a dashboard.
迈向协作融合:用自动化协同分析量化协作质量
协作是21世纪四大重要技能之一。随着传感器的广泛使用,人们对协同协作(CC)的兴趣最近有所增加。大多数相关文献使用音频模式来检测合作的指标(如总发言时间和轮流)。CC发生在物理空间中,小组成员分享他们的社交(即,非语言音频指标,如说话时间,手势)和认知空间(即,口头音频指标,如对话内容)。过去的文献大多集中在社会空间来检测合作的质量。在本研究中,我们关注社会空间和认知空间,重点关注认知空间,以了解不同发展的协作模式和协作收敛,并量化协作质量。我们通过在大学环境中收集14个不同时段的录音进行实地试验,同时大学教职员工和学生合作玩棋盘游戏来设计学习活动。这个协作任务由不同的阶段组成,每个协作成员都被分配了一个预先固定的角色。我们分析收集到的群体语音数据,进行基于角色的分析,并借助仪表板将其可视化。
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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