Necessary and sufficient graphical conditions for optimal adjustment sets in causal graphical models with hidden variables

Neural Information Processing Systems 

The problem of selecting optimal backdoor adjustment sets to estimate causal effects in graphical models with hidden and conditioned variables is addressed. Previous work has defined optimality as achieving the smallest asymptotic estimation variance and derived an optimal set for the case without hidden variables.