Estimating individual treatment effects from data of randomized experiments is a critical task in causal inference. The Stable Unit Treatment Value Assumption (SUTVA) is usually made in causal inference. However, interference can introduce bias when the assigned treatment on one unit affects the potential outcomes of the neighboring units. This interference phenomenon is known as spillover effect in economics or peer effect in social science. Usually, in randomized experiments or observational studies with interconnected units, one can only observe treatment responses under interference. Hence, how to estimate the superimposed causal effect and recover the individual treatment effect in the presence of interference becomes a challenging task in causal inference. In this work, we study causal effect estimation under general network interference using GNNs, which are powerful tools for capturing the dependency in the graph. After deriving causal effect estimators, we further study intervention policy improvement on the graph under capacity constraint. We give policy regret bounds under network interference and treatment capacity constraint. Furthermore, a heuristic graph structure-dependent error bound for GNN-based causal estimators is provided.
翻译:从随机实验的数据中估计个别治疗效果是因果关系推断中的一项关键任务。稳定单位处理值假设(SUTPA)通常是在因果推断中作出的。然而,当一个单位的指定处理影响到相邻单位的潜在结果时,干扰可能会产生偏差。这种干扰现象在经济学或社会科学的同侪效应中被称为溢出效应。通常,在与相互关联的单位进行随机实验或观察研究时,人们只能观察受干扰的治疗反应。因此,在因果关系推断中,如何估计超因果效应并恢复受到干扰的个别治疗效应是一项具有挑战性的任务。在这项工作中,我们在一般网络干扰下研究因果估计,使用GNNSs,这是在图形中捕捉依赖性的有力工具。在产生因果关系估计因素之后,我们进一步研究在能力限制下对图表的干预政策作出改进。我们在网络干扰和治疗能力限制下,对政策表示遗憾。此外,为基于GNN的因果测算师提供了基于超自然结构的误差。