A complete generalized adjustment criterion

Publication date

2015

Authors

Perković, Emilija
Textor, JohannesISNI 0000000390866942
Kalisch, Markus
Maathuis, Marloes H.

Editors

Meila, Marina
Heskes, Tom

Advisors

Supervisors

DOI

Document Type

Part of book
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License

Abstract

Covariate adjustment is a widely used approach to estimate total causal effects from observational data. Several graphical criteria have been developed in recent years to identify valid covariates for adjustment from graphical causal models. These criteria can handle multiple causes, latent confounding, or partial knowledge of the causal structure; however, their diversity is confusing and some of them are only sufficient, but not necessary. In this paper, we present a criterion that is necessary and sufficient for four different classes of graphical causal models: directed acyclic graphs (DAGs), maximum ancestral graphs (MAGs), completed partially directed acyclic graphs (CPDAGs), and partial ancestral graphs (PAGs). Our criterion subsumes the existing ones and in this way unifies adjustment set construction for a large set of graph classes.

Keywords

Artificial Intelligence

Citation

Perković, E, Textor, J, Kalisch, M & Maathuis, M H 2015, A complete generalized adjustment criterion. in M Meila & T Heskes (eds), Uncertainty in Artificial Intelligence : Proceedings of the Thirty-First Conference (2015), July 12-16, 2015, Amsterdam, Netherlands. AUAI Press, pp. 682-691, 31st Conference on Uncertainty in Artificial Intelligence, UAI 2015, Amsterdam, Netherlands, 12/07/15. < http://auai.org/uai2015/proceedings.shtml >, conference