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Graph Cluster Randomization: Network Exposure to Multiple Universes

机译:图簇随机化:网络暴露于多个宇宙

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A/B testing is a standard approach for evaluating the effect of online experiments; the goal is to estimate the 'average treatment effect' of a new feature or condition by exposing a sample of the overall population to it. A drawback with A/B testing is that it is poorly suited for experiments involving social interference, when the treatment of individuals spills over to neighboring individuals along an underlying social network. In this work, we propose a novel methodology using graph clustering to analyze average treatment effects under social interference. To begin, we characterize graph-theoretic conditions under which individuals can be considered to be 'network exposed' to an experiment. We then show how graph cluster randomization admits an efficient exact algorithm to compute the probabilities for each vertex being network exposed under several of these exposure conditions. Using these probabilities as inverse weights, a Horvitz-Thompson estimator can then provide an effect estimate that is unbiased, provided that the exposure model has been properly specified. Given an estimator that is unbiased, we focus on minimizing the variance. First, we develop simple sufficient conditions for the variance of the estimator to be asymptotically small in n, the size of the graph. However, for general randomization schemes, this variance can be lower bounded by an exponential function of the degrees of a graph. In contrast, we show that if a graph satisfies a restricted-growth condition on the growth rate of neighborhoods, then there exists a natural clustering algorithm, based on vertex neighborhoods, for which the variance of the estimator can be upper bounded by a linear function of the degrees. Thus we show that proper cluster randomization can lead to exponentially lower estimator variance when experimentally measuring average treatment effects under interference.
机译:A / B测试是评估在线实验效果的标准方法;目的是通过将整体人群的样本暴露给新特征或状况,来估计其“平均治疗效果”。 A / B测试的一个缺点是,当个人的待遇沿基础社会网络传播到邻近的个人时,它不太适合涉及社会干扰的实验。在这项工作中,我们提出了一种使用图聚类分析社会干预下平均治疗效果的新颖方法。首先,我们描述图论条件的特征,在该条件下可以将个体视为实验的“网络暴露”。然后,我们展示图簇随机化如何允许有效的精确算法来计算在这些暴露条件中的一些暴露条件下网络暴露的每个顶点的概率。使用这些概率作为反权重,假设已经正确指定了暴露模型,那么Horvitz-Thompson估计器便可以提供无偏的效果估计。给定一个无偏的估计量,我们专注于最小化方差。首先,我们开发了简单的充分条件,以使估计量的方差在图的大小n中渐近变小。但是,对于一般的随机方案,此方差可以由图的程度的指数函数来限定。相反,我们表明,如果图满足邻域增长率的限制增长条件,则存在基于顶点邻域的自然聚类算法,为此,估计量的方差可以由线性函数上限度。因此,当实验测量干扰下的平均治疗效果时,我们表明适当的聚类随机化可以导致估计数方差降低。

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