通过多模态学习分析实现体现式团队合作交流的自动转录和编码

IF 6.7 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Linxuan Zhao, Dragan Gašević, Zachari Swiecki, Yuheng Li, Jionghao Lin, Lele Sha, Lixiang Yan, Riordan Alfredo, Xinyu Li, Roberto Martinez-Maldonado
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引用次数: 0

摘要

在高风险行业,有效的协作和团队合作技能至关重要,因为这些方面的缺陷可能导致伤害和死亡风险。为了促进这些重要技能的发展,人们创建了沉浸式学习空间来模拟真实世界的场景,使学生能够安全地提高团队协作能力。在这样的学习环境中,学生们可以同时进行多个对话环节,在不同的空间位置独立组织起来并行处理任务。这种复杂的情况给教育者评估团队合作和学生反思自己的表现带来了挑战,特别是考虑到有效沟通在体现团队合作中的重要性。为此,我们提出了一种基于空间和语音数据生成团队合作分析的自动化方法。我们在以体现式团队合作为中心的动态、沉浸式医疗保健学习环境中演示了这种方法。此外,我们还评估了该自动方法能否生成空间分布对话片段的转录和认识论网络,其质量是否可与人工生成的质量相媲美,以实现研究目标。本文有两大贡献:(1) 本文提出了一种方法,该方法整合了自动语音识别和自然语言处理技术,可自动转录和编码团队交流并生成分析结果;(2) 本文对这些技术生成的输出结果中的错误进行了分析,为参与类似系统设计的研究人员和从业人员提供了启示。在这些环境中,学生可以同时进行多个对话,同时在不同的物理位置共同完成任务。这些互动的动态性质使得教师很难评估团队合作和交流,学生也很难反思自己的表现。本文的贡献 我们提出了一种采用多模态学习分析的方法,用于自动生成对学生对话内容的团队合作相关见解。这种数据处理方法可以自动转录和编码在沉浸式学习环境中团队合作的学生所产生的空间分布对话片段,并进行下游分析。这种方法使用了空间分析、自然语言处理和自动语音识别技术。对从业人员的启示 对团队成员之间的对话片段进行自动编码,有助于创建分析工具,协助评估和反思团队工作。通过分析空间和语音数据,可以应用先进的学习分析技术,为快节奏的物理学习空间中的教学提供支持,让学生可以自由地相互交流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Towards automated transcribing and coding of embodied teamwork communication through multimodal learning analytics

Towards automated transcribing and coding of embodied teamwork communication through multimodal learning analytics

Effective collaboration and teamwork skills are critical in high-risk sectors, as deficiencies in these areas can result in injuries and risk of death. To foster the growth of these vital skills, immersive learning spaces have been created to simulate real-world scenarios, enabling students to safely improve their teamwork abilities. In such learning environments, multiple dialogue segments can occur concurrently as students independently organise themselves to tackle tasks in parallel across diverse spatial locations. This complex situation creates challenges for educators in assessing teamwork and for students in reflecting on their performance, especially considering the importance of effective communication in embodied teamwork. To address this, we propose an automated approach for generating teamwork analytics based on spatial and speech data. We illustrate this approach within a dynamic, immersive healthcare learning environment centred on embodied teamwork. Moreover, we evaluated whether the automated approach can produce transcriptions and epistemic networks of spatially distributed dialogue segments with a quality comparable to those generated manually for research objectives. This paper makes two key contributions: (1) it proposes an approach that integrates automated speech recognition and natural language processing techniques to automate the transcription and coding of team communication and generate analytics; and (2) it provides analyses of the errors in outputs generated by those techniques, offering insights for researchers and practitioners involved in the design of similar systems.

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来源期刊
British Journal of Educational Technology
British Journal of Educational Technology EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
15.60
自引率
4.50%
发文量
111
期刊介绍: BJET is a primary source for academics and professionals in the fields of digital educational and training technology throughout the world. The Journal is published by Wiley on behalf of The British Educational Research Association (BERA). It publishes theoretical perspectives, methodological developments and high quality empirical research that demonstrate whether and how applications of instructional/educational technology systems, networks, tools and resources lead to improvements in formal and non-formal education at all levels, from early years through to higher, technical and vocational education, professional development and corporate training.
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