选择太多:如何确定政策网络中的联盟?

IF 2.9 2区 社会学 Q1 ANTHROPOLOGY
Thibaud Deguilhem , Juliette Schlegel , Jean-Philippe Berrou , Ousmane Djibo , Alain Piveteau
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引用次数: 0

摘要

对于政策网络和倡导联盟框架(ACF)等不同的政策分析潮流而言,从政策信念和行动者之间的协调中确定联盟对于准确理解政策进程至关重要。从行动者之间的合作与交流中确定政策子系统,最近已开始与网络分析建立起密切的联系。这方面的研究经常采用 "区块建模与社群检测"(BMCD)策略来界定同质的政治群体。然而,BMCD 文献发展迅速,使用的算法和有趣的选择方法多种多样,比政策网络分析,尤其是 ACF 中使用的算法和方法更加多样化。因此,在特定情况下确定最佳方法可能会很困难,而且很少有 ACF 研究给出明确的理由。另一方面,很少有 BMCD 出版物对真实社会网络进行系统比较,也从未将其应用于政策网络数据集。本文提供了一种新的、相关的 5 步选择方法,以协调政策网络/ACF 和 BMCD 两方面的进展。通过对在马达加斯加和尼日尔收集到的原始非洲政策网络数据的应用,我们为未来利用政策网络分析进行的 ACF 研究提供了一套有用的实用建议:(i) 政策网络的密度和规模会影响识别过程,(ii) 可以通过最大化基于算法结果之间的收敛性和同质性的新指标来严格确定 "最佳算法",(iii) 研究人员需要谨慎对待缺失数据:它们会影响结果,而估算并不能解决问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Too many options: How to identify coalitions in a policy network?

For different currents in policy analysis as policy networks and the Advocacy Coalition Framework (ACF), identifying coalitions from policy beliefs and coordination between actors is crucial to a precise understanding of a policy process. Focusing particularly the relational dimension of ACF approaches linked with policy network analysis, determining policy subsystems from the actor collaborations and exchanges has recently begun offering fertile links with the network analysis. Studies in this way frequently apply Block Modeling and Community Detection (BMCD) strategies to define homogeneous political groups. However, the BMCD literature is growing quickly, using a wide variety of algorithms and interesting selection methods that are much more diverse than those used in the policy network analysis and particularly the ACF when this current focused on the collaboration networks before or after regarding the belief distance between actors. Identifying the best methodological option in a specific context can therefore be difficult and few ACF studies give an explicit justification. On the other hand, few BMCD publications offer a systematic comparison of real social networks and they are never applied to policy network datasets. This paper offers a new, relevant 5-Step selection method to reconcile advances in both the policy networks/ACF and BMCD. Using an application based on original African policy network data collected in Madagascar and Niger, we provide a useful set of practical recommendations for future ACF studies using policy network analysis: (i) the density and size of the policy network affect the identification process, (ii) the “best algorithm” can be rigorously determined by maximizing a novel indicator based on convergence and homogeneity between algorithm results, (iii) researchers need to be careful with missing data: they affect the results and imputation does not solve the problem.

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来源期刊
Social Networks
Social Networks Multiple-
CiteScore
5.90
自引率
12.90%
发文量
118
期刊介绍: Social Networks is an interdisciplinary and international quarterly. It provides a common forum for representatives of anthropology, sociology, history, social psychology, political science, human geography, biology, economics, communications science and other disciplines who share an interest in the study of the empirical structure of social relations and associations that may be expressed in network form. It publishes both theoretical and substantive papers. Critical reviews of major theoretical or methodological approaches using the notion of networks in the analysis of social behaviour are also included, as are reviews of recent books dealing with social networks and social structure.
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