Unobserved confounding is the main obstacle to causal effect estimation from observational data. Instrumental variables (IVs) are widely used for causal effect estimation when there exist latent confounders. With the standard IV method, when a given IV is valid, unbiased estimation can be obtained, but the validity requirement of standard IV is strict and untestable. Conditional IV has been proposed to relax the requirement of standard IV by conditioning on a set of observed variables (known as a conditioning set for a conditional IV). However, the criterion for finding a conditioning set for a conditional IV needs complete causal structure knowledge or a directed acyclic graph (DAG) representing the causal relationships of both observed and unobserved variables. This makes it impossible to discover a conditioning set directly from data. In this paper, by leveraging maximal ancestral graphs (MAGs) in causal inference with latent variables, we propose a new type of IV, ancestral IV in MAG, and develop the theory to support data-driven discovery of the conditioning set for a given ancestral IV in MAG. Based on the theory, we develop an algorithm for unbiased causal effect estimation with an ancestral IV in MAG and observational data. Extensive experiments on synthetic and real-world datasets have demonstrated the performance of the algorithm in comparison with existing IV methods.
翻译:由于标准四方法,如果给定四是有效的,则可以获得公正的估计,但标准四的有效性要求是严格和无法检验的。在本文中,通过利用最大祖传图(MAGs)与潜在变数的因果关系推断,我们提议采用新的四类,在MAG中采用祖传四型,并发展理论,支持以数据驱动的方式发现在MAG中为特定祖传四型四型装订型装订型。根据理论,我们制定了一个对四型号进行不偏倚性因果关系估计的算法,在MAG中采用已证实的合成四型号数据,并对现有观测数据进行了全面分析。