用独立集抽样估计社会网络中的策略效果

IF 2.9 2区 社会学 Q1 ANTHROPOLOGY
Eugene T.Y. Ang , Prasanta Bhattacharya , Andrew E.B. Lim
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引用次数: 0

摘要

由于在治疗组内部以及治疗组和非治疗组之间存在网络干扰,评估政策干预对嵌入社会网络的受访者的影响往往具有挑战性。在本文中,我们提出了一种新的经验策略,将基于独立集识别的网络抽样与随机因素导向模型(SAOM)相结合,以推断政策的直接和净效应。通过将受访者从一个独立的集合分配到治疗中,我们能够在较长一段时间内阻止治疗在接受治疗的受访者之间的直接溢出,在此期间,治疗的直接效果可以与相关的网络干扰隔离开来。我们通过使用现实生活和生成的网络对虚拟政策实施进行基于模拟的评估,并使用反事实方法来估计政策的治疗效果,从而经验地证明了这一点。我们的结果突出了我们提出的实证策略的有效性,值得注意的是,网络抽样技术在影响政策效果评估中的作用。这项研究的发现有可能帮助研究人员和政策制定者在网络社会中规划、设计和预测政策反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating policy effects in a social network with independent set sampling
Evaluating the impact of policy interventions on respondents who are embedded in a social network is often challenging due to the presence of network interference within the treatment groups, as well as between treatment and non-treatment groups. In this paper, we propose a novel empirical strategy that combines network sampling based on the identification of independent sets with a stochastic actor-oriented model (SAOM) to infer the direct and net effects of a policy. By assigning respondents from an independent set to the treatment, we are able to block direct spillover of the treatment among the treated respondents for an extended period of time, during which the direct effect of the treatment can be isolated from the associated network interference. We empirically demonstrate this using a simulation-based evaluation of a fictitious policy implementation using both real-life and generated networks, and use a counterfactual approach to estimate the treatment effect of the policy. Our results highlight the effectiveness of our proposed empirical strategy, and notably, the role of network sampling techniques in influencing the evaluation of policy effects. The findings from this study have the potential to help researchers and policymakers with planning, designing, and anticipating policy responses in a networked society.
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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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