Network interference, where the outcome of an individual is affected by the treatment assignment of those in their social network, is pervasive in real-world settings. However, it poses a challenge to estimating causal effects. We consider the task of estimating the total treatment effect (TTE), or the difference between the average outcomes of the population when everyone is treated versus when no one is, under network interference. Under a Bernoulli randomized design, we provide an unbiased estimator for the TTE when network interference effects are constrained to low order interactions among neighbors of an individual. We make no assumptions on the graph other than bounded degree, allowing for well-connected networks that may not be easily clustered. We derive a bound on the variance of our estimator and show in simulated experiments that it performs well compared with standard estimators for the TTE. We also derive a minimax lower bound on the mean squared error of our estimator which suggests that the difficulty of estimation can be characterized by the degree of interactions in the potential outcomes model. We also prove that our estimator is asymptotically normal under boundedness conditions on the network degree and potential outcomes model. Central to our contribution is a new framework for balancing model flexibility and statistical complexity as captured by this low order interactions structure.
翻译:个人在社交网络中受到治疗工作的影响,网络干扰的结果在现实世界环境中十分普遍。然而,这给估计因果关系带来了挑战。我们考虑的是估算总体治疗效果(TTE)的任务,或者在网络干扰下,在每个人接受治疗时,人口的平均结果与无人接受治疗时的平均结果之间的差别。在伯努利随机设计下,我们为TE提供一个公正的估计器,当网络干扰效应受制于个人邻居之间的低顺序互动时,我们为TE提供一个公正的估计器。我们除了受约束的程度外,在图表上不作任何假设,允许连接起来的网络可能不容易组合起来。我们根据我们的估算器的偏差得出一个界限,并在模拟实验中显示,与TTE的标准估计器相比,它的表现良好。我们还根据我们估算器的平均平方差设计,我们给出了一个最小的缩微的缩缩缩缩图,它表明估计难度可以用潜在结果模型中的相互作用程度来描述。我们还证明我们的估算器在受约束的程度之外,使得连接的网络网络的网络网络能够正常地在受约束的模型和潜在结构的模型下进行调节。