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同伴群体促进组织学习:具有实际约束的聚类。

Peer groups for organisational learning: Clustering with practical constraints.

机构信息

Science and Engineering Faculty, Queensland University of Technology, Brisbane, Queensland, Australia.

ARC Centre for Excellence in Mathematical and Statistical Frontiers, Brisbane, Queensland, Australia.

出版信息

PLoS One. 2021 Jun 1;16(6):e0251723. doi: 10.1371/journal.pone.0251723. eCollection 2021.

Abstract

Peer-grouping is used in many sectors for organisational learning, policy implementation, and benchmarking. Clustering provides a statistical, data-driven method for constructing meaningful peer groups, but peer groups must be compatible with business constraints such as size and stability considerations. Additionally, statistical peer groups are constructed from many different variables, and can be difficult to understand, especially for non-statistical audiences. We developed methodology to apply business constraints to clustering solutions and allow the decision-maker to choose the balance between statistical goodness-of-fit and conformity to business constraints. Several tools were utilised to identify complex distinguishing features in peer groups, and a number of visualisations are developed to explain high-dimensional clusters for non-statistical audiences. In a case study where peer group size was required to be small (≤ 100 members), we applied constrained clustering to a noisy high-dimensional data-set over two subsequent years, ensuring that the clusters were sufficiently stable between years. Our approach not only satisfied clustering constraints on the test data, but maintained an almost monotonic negative relationship between goodness-of-fit and stability between subsequent years. We demonstrated in the context of the case study how distinguishing features between clusters can be communicated clearly to different stakeholders with substantial and limited statistical knowledge.

摘要

同行评议被广泛应用于组织学习、政策实施和基准测试等多个领域。聚类为构建有意义的同行群体提供了一种统计数据驱动的方法,但同行群体必须与业务约束(如规模和稳定性考虑)兼容。此外,统计同行群体是由许多不同的变量构建的,可能难以理解,尤其是对于非统计受众。我们开发了一种方法,将业务约束应用于聚类解决方案,并允许决策者在统计拟合优度和业务约束一致性之间进行权衡。我们利用了多种工具来识别同行群体中的复杂区别特征,并开发了多种可视化工具来为非统计受众解释高维聚类。在一个要求同行群体规模较小(≤100 名成员)的案例研究中,我们在随后的两年中对嘈杂的高维数据集应用了受约束的聚类,以确保集群在两年之间具有足够的稳定性。我们的方法不仅满足了测试数据的聚类约束,而且在随后的几年中保持了拟合优度和稳定性之间几乎单调的负相关关系。我们在案例研究的背景下展示了如何使用有限的统计知识,将集群之间的区别特征清晰地传达给具有不同背景和不同统计知识的利益相关者。

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