多模态学习分析的新时代:奠定和发展MMLA的12项核心承诺

M. Worsley, Roberto Martínez-Maldonado, Cynthia A. D'Angelo
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引用次数: 19

摘要

多模态学习分析(MMLA)日益成为学习分析社区讨论的话题。学习分析研究协会是CrossMMLA特别兴趣小组的所在地,并在学习分析暑期学院(LASI)期间定期举办MMLA研讨会。在本文中,我们阐明了12项承诺,我们认为这些承诺对于创建有效的MMLA创新至关重要。此外,随着MMLA在使用中的增长,阐明一组核心承诺非常重要,这些承诺可以帮助指导MMLA研究人员和更广泛的学习分析社区。我们所描述的承诺深深植根于MMLA的起源,也反映了MMLA在过去10年中发展的方式。我们根据(i)数据收集、(ii)分析和推理以及(iii)反馈和数据传播来组织12项承诺,并论证为什么这些承诺对于开展道德、高质量的MMLA研究很重要。此外,在使用承诺的语言时,我们强调MMLA研究与已建立的定性研究方法和批判性研究的重要关注点保持一致的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Era in Multimodal Learning Analytics: Twelve Core Commitments to Ground and Grow MMLA
Multimodal learning analytics (MMLA) has increasingly been a topic of discussion within the learning analytics community. The Society of Learning Analytics Research is home to the CrossMMLA Special Interest Group and regularly hosts workshops on MMLA during the Learning Analytics Summer Institute (LASI). In this paper, we articulate a set of 12 commitments that we believe are critical for creating effective MMLA innovations. Moreover, as MMLA grows in use, it is important to articulate a set of core commitments that can help guide both MMLA researchers and the broader learning analytics community. The commitments that we describe are deeply rooted in the origins of MMLA and also reflect the ways that MMLA has evolved over the past 10 years. We organize the 12 commitments in terms of (i) data collection, (ii) analysis and inference, and (iii) feedback and data dissemination and argue why these commitments are important for conducting ethical, high-quality MMLA research. Furthermore, in using the language of commitments, we emphasize opportunities for MMLA research to align with established qualitative research methodologies and important concerns from critical studies.
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