Estimate Collapsibility of Causal Effects in Completed Partial DAGs via Strong d-Convex Hulls

Deng, Yuxin, Sun, Yi, Li, Zhiming, Liu, Huaxiong

arXiv.org Machine Learning 

This paper proposes a collapsible method for estimating causal effects that maintains the estimator's consistency before and after marginalization over some variables in completed partially directed acyclic graphs (CPDAGs). We first introduce the estimate collapsibility for CPDAGs and characterize the minimal collapsible sets as strong d-convex hulls. An efficient algorithm is devised to obtain such sets in DAGs and is generalized to CPDAGs. Then, we combine the graph reduction procedure with the IDA framework.

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