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Near-Optimal Multi-Perturbation Experimental Design for Causal Structure Learning

Authors :
Sussex, Scott
Krause, Andreas
Uhler, Caroline
Ranzato, Marc'Aurelio
Beygelzimer, Alina
Liang, Percy S.
Wortman Vaughan, Jennifer
Dauphin, Yann
Source :
Advances in Neural Information Processing Systems 34
Publication Year :
2022
Publisher :
Curran, 2022.

Abstract

Causal structure learning is a key problem in many domains. Causal structures can be learnt by performing experiments on the system of interest. We address the largely unexplored problem of designing a batch of experiments that each simultaneously intervene on multiple variables. While potentially more informative than the commonly considered single-variable interventions, selecting such interventions is algorithmically much more challenging, due to the doubly-exponential combinatorial search space over sets of composite interventions. In this paper, we develop efficient algorithms for optimizing different objective functions quantifying the informativeness of a budget-constrained batch of experiments. By establishing novel submodularity properties of these objectives, we provide approximation guarantees for our algorithms. Our algorithms empirically perform superior to both random interventions and algorithms that only select single-variable interventions.<br />10 pages, 2 figures, appendix, to be published in 35th Conference on Neural Information Processing Systems (NeurIPS 2021), fixed typos and clarified wording

Details

Language :
English
Database :
OpenAIRE
Journal :
Advances in Neural Information Processing Systems 34
Accession number :
edsair.doi.dedup.....f980a3376a732a3b3e3ad4463ec3246c