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    Networks in the Public Sector

    Author(s): Michael D. Siciliano , Weijie Wang , Qian Hu , Alejandra Medina , David Krackhardt

    ISBN: 9781009108416
    Publication Date: 25/08/2022
    Pages: 92
    Sale price£18.00 GBP

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    Networks in the Public Sector

    Networks in the Public Sector

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    Networks contain complex patterns of dependency and require multiple levels of analysis to explain their formation, structure, and outcomes. In this Element, the authors develop the Multilevel Network Framework. The framework serves as (i) a conceptual tool to think more deeply about network dynamics, (ii) a research tool to assist in connecting data, theory, and empirical models, and (iii) a diagnostic tool to analyze and categorize bodies of research. The authors then systematically review the network literature in public administration, management, and policy. They apply the Multilevel Network Framework to categorize the literature; identify significant gaps; examine micro, macro and cross-level relations; and examine relevant mechanisms and theories. Overall this Element helps readers to (i) understand and classify network research, (ii) use appropriate theoretical frameworks to examine network-related problems, (iii) understand how networks emerge and produce effects at different levels of analysis, and (iv) select appropriate empirical models.