独创性
课程研究
基质(化学分析)
计算机科学
价值(数学)
光学(聚焦)
结果(博弈论)
定性研究
知识管理
管理科学
工程类
社会学
数学
教育学
专业发展
物理
社会科学
材料科学
数理经济学
机器学习
光学
复合材料
作者
John Paul Mynott,Stephanie Elizabeth Margaret O'Reilly
出处
期刊:International Journal for Lesson and Learning Studies
[Emerald Publishing Limited]
日期:2022-07-10
卷期号:11 (3): 174-192
被引量:5
标识
DOI:10.1108/ijlls-01-2022-0004
摘要
Purpose Lesson study (LS) is a collaborative form of action research. Collaboration is central to LS methodology, therefore exploring and expanding the understanding of the collaborative features that occur in LS is a priority. This paper explores the features of collaboration in existing publications on LS to consider if, as Quaresma (2020) notes, collaboration is simplistically referred to within LS research. Design/methodology/approach Utilising a qualitative review of LS literature to explore LS collaboration through Mynott's (2019) outcome model and Huxham and Vangen's (2005) theory of collaborative advantage and inertia. 396 publications using “lesson study” and “collaboration” as key words were considered and reviewed, with 26 articles further analysed and coded, generating a collaborative feature matrix. Findings While collaboration in LS is referred to generically in the articles analysed, the authors found examples where collaboration is considered at a meta, meso and micro level (Lemon and Salmons, 2021), and a balance between collaborative advantage and inertia. However, only a small proportion of LS publications discuss collaboration in depth and, while the matrix will support future research, more focus needs to be given to how collaboration functions within LS. Originality/value Through answering Robutti et al. 's (2016) question about what can be learnt from the existing LS research studies on collaboration, this paper builds on Mynott's (2019) outcome model by providing a detailed matrix of collaborative features that can be found in LS work. This matrix has applications beyond the paper for use by facilitators, leaders of LS, and researchers to explore their LS collaborations through improved understanding of collaboration.
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