Network Inference in Public Administration: Questions, Challenges, and Models of Causality

Travis A. Whetsell, Michael D. Siciliano
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Abstract

Descriptive and inferential social network analysis has become common in public administration studies of network governance and management. A large literature has developed in two broad categories: antecedents of network structure, and network effects and outcomes. A new topic is emerging on network interventions that applies knowledge of network formation and effects to actively intervene in the social context of interaction. Yet, the question remains how might scholars deploy and determine the impact of network interventions. Inferential network analysis has primarily focused on statistical simulations of network distributions to produce probability estimates on parameters of interest in observed networks, e.g. ERGMs. There is less attention to design elements for causal inference in the network context, such as experimental interventions, randomization, control and comparison networks, and spillovers. We advance a number of important questions for network research, examine important inferential challenges and other issues related to inference in networks, and focus on a set of possible network inference models. We categorize models of network inference into (i) observational studies of networks, using descriptive and stochastic methods that lack intervention, randomization, or comparison networks; (ii) simulation studies that leverage computational resources for generating inference; (iii) natural network experiments, with unintentional network-based interventions; (iv) network field experiments, with designed interventions accompanied by comparison networks; and (v) laboratory experiments that design and implement randomization to treatment and control networks. The article offers a guide to network researchers interested in questions, challenges, and models of inference for network analysis in public administration.
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公共行政中的网络推断:问题、挑战和因果关系模型
在有关网络治理和管理的公共行政研究中,描述性和推论性的社会网络分析已十分普遍。已形成的大量文献分为两大类:网络结构的前因、网络效应和结果。一个关于网络干预的新课题正在出现,它运用网络形成和效应的知识,对互动的社会环境进行积极干预。然而,问题仍然是学者们如何部署和确定网络干预的影响。推论性网络分析主要侧重于对网络分布进行统计模拟,从而对观察到的网络(如 ERGM)中的相关参数进行概率估计。对于网络背景下因果推断的设计要素,如实验干预、随机化、控制和比较网络以及溢出效应等,则关注较少。我们提出了网络研究中的一些重要问题,考察了重要的推论挑战以及与网络推论相关的其他问题,并重点讨论了一系列可能的网络推论模型。我们将网络推断模型分为:(i) 使用描述性和随机方法的网络观察研究,这些研究缺乏干预、随机化或比较网络;(ii) 利用计算资源生成推断的模拟研究;(iii) 基于网络的无意干预的自然网络实验;(iv) 伴随着比较网络的设计干预的网络现场实验;(v) 设计并实施治疗和对照网络随机化的实验室实验。文章为对公共管理中网络分析的问题、挑战和推论模型感兴趣的网络研究人员提供了指南。
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