Lifted Causal Inference in Relational Domains

Luttermann, Malte; Hartwig, Mattis; Braun, Tanya; Möller, Ralf; Gehrke, Marcel

Research article in edited proceedings (conference) | Peer reviewed

Abstract

Lifted inference exploits symmetries in probabilistic graphical models by using a representative for indistinguishable objects, thereby speeding up query answering while maintaining exact answers. Even though lifting is a well-established technique for the task of probabilistic inference in relational domains, it has not yet been applied to the task of causal inference. In this paper, we show how lifting can be applied to efficiently compute causal effects in relational domains. More specifically, we introduce parametric causal factor graphs as an extension of parametric factor graphs incorporating causal knowledge and give a formal semantics of interventions therein. We further present the lifted causal inference algorithm to compute causal effects on a lifted level, thereby drastically speeding up causal inference compared to propositional inference, e.g., in causal Bayesian networks. In our empirical evaluation, we demonstrate the effectiveness of our approach.

Details about the publication

PublisherLocatello, Francesco; Didelez, Vanessa
Book titleCLeaR-24 Proceedings of the 3rd Conference on Causal Learning and Reasoning
Page range827-842
Publishing companyMLResearchPress
Place of publicationonline
Title of seriesProceedings of Machine Learning Research (ISSN: 2640-3498)
Volume of series236
StatusPublished
Release year2024
Language in which the publication is writtenEnglish
ConferenceCLeaR-24 3rd Conference on Causal Learning and Reasoning, Los Angeles, United States
Link to the full texthttps://proceedings.mlr.press/v236/luttermann24a/luttermann24a.pdf
KeywordsLifting; causal inference; relational domains; causal effects

Authors from the University of Münster

Braun, Tanya
Junior professorship for practical computer science - modern aspects of data processing / data science (Prof. Braun)