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Adjustments to propensity score matching for network structures

机译:调整网络结构倾向得分匹配

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Causal inference from observational data rely on similar treatment and control groups to isolate for variation, in addition to adjustments in estimates to account for the remaining uncontrollable variation. Propensity score matching and statistical inference are established tools to achieve for these two requirements respectively. Network structures in the underlying data of the experiment challenge this convention since they question assumptions of independent observations and increase the risk of unobserved variables. In this paper we approach the problem with the intent of preserving propensity score matching and inference, while accommodating network information. Multiple experiments are re-evaluated with network information. All experiments were intended to create organic growth through referrals in a financial services business. We offer first, the Propensity Score Layout; a rapid visualization approach to scan data from multiple studies that potentially may require re-evaluation due to network structure. Second, the Propensity Score Network Risk; a metric that captures the extent to which network structure interferes with the treatment of the experiment. And third; variables constructed from network information that to our surprise estimate the propensity score significantly better than node attributes. We also present a set of interesting problems for researchers in academia and industry. To the best of our knowledge network methods have not been studied thoroughly in this domain. We feel the combination of technique, results and domain are novel.
机译:根据观测数据的因果推断,除了对估计值进行调整以解决剩余的无法控制的变化之外,还依赖于相似的治疗和对照组来隔离变化。倾向得分匹配和统计推断是分别针对这两个要求而建立的工具。实验基础数据中的网络结构对这一约定提出了挑战,因为它们质疑独立观察的假设并增加了未观察到的变量的风险。在本文中,我们旨在保留倾向分数匹配和推理,同时容纳网络信息,从而解决该问题。使用网络信息重新评估多个实验。所有实验均旨在通过推荐金融服务业务来创造有机增长。我们首先提供倾向得分表;一种快速的可视化方法,用于扫描来自多个研究的数据,由于网络结构的原因,这些数据可能需要重新评估。第二,倾向得分网络风险;捕获网络结构干扰实验处理程度的指标。第三;由网络信息构成的变量令我们惊讶的是,其倾向得分明显优于节点属性。我们还为学术界和工业界的研究人员提出了一系列有趣的问题。据我们所知,尚未对该领域的网络方法进行彻底的研究。我们认为技术,结果和领域的结合是新颖的。

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