Estimating causal effects has become an integral part of most applied fields. Solving these modern causal questions requires tackling violations of many classical causal assumptions. In this work we consider the violation of the classical no-interference assumption, meaning that the treatment of one individuals might affect the outcomes of another. To make interference tractable, we consider a known network that describes how interference may travel. However, unlike previous work in this area, the radius (and intensity) of the interference experienced by a unit is unknown and can depend on different sub-networks of those treated and untreated that are connected to this unit. We study estimators for the average direct treatment effect on the treated in such a setting. The proposed estimator builds upon a Lepski-like procedure that searches over the possible relevant radii and treatment assignment patterns. In contrast to previous work, the proposed procedure aims to approximate the relevant network interference patterns. We establish oracle inequalities and corresponding adaptive rates for the estimation of the interference function. We leverage such estimates to propose and analyze two estimators for the average direct treatment effect on the treated. We address several challenges steaming from the data-driven creation of the patterns (i.e. feature engineering) and the network dependence. In addition to rates of convergence, under mild regularity conditions, we show that one of the proposed estimators is asymptotically normal and unbiased.
翻译:估计因果关系已成为大多数应用领域的一个组成部分。解决这些现代因果关系问题需要处理违反许多典型因果关系假设的行为。在这项工作中,我们考虑到违反传统不干涉假设的情况,这意味着一个人的待遇可能会影响另一个人的结果。为了使干预易于扩散,我们考虑一个已知的网络,描述干扰如何旅行。然而,与以前的工作不同,一个单位所经历干扰的半径(和强度)并不为人所知,并且可能取决于与这个单位有关的被治疗和未治疗者的不同子网络。我们研究对在这种环境下接受治疗者的平均直接治疗效应的估测器。提议的估测器基于一种类似于Lepski的程序,对可能相关的辐射和治疗分配模式进行搜索。与以前的工作不同,拟议的程序旨在接近相关的网络干扰模式。我们为估计干扰功能而确定或缩小不平等和相应的适应率。我们利用这种估计来提出和分析两种平均直接治疗效果的估测器。我们从正常的网络的趋同性、正常的网络的趋同性状态下处理若干挑战。我们从正常的网络的趋同性到正常的网络的趋同性性,显示正常的规律性(我们所拟议的网络所呈现的惯性)的规律的规律的规律性状态下的规律性。