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Learning Neural Causal Models from Unknown Interventions

Authors :
Ke, Nan Rosemary
Bilaniuk, Olexa
Goyal, Anirudh
Bauer, Stefan
Larochelle, Hugo
Schölkopf, Bernhard
Mozer, Michael C.
Pal, Chris
Bengio, Yoshua
Publication Year :
2019

Abstract

Promising results have driven a recent surge of interest in continuous optimization methods for Bayesian network structure learning from observational data. However, there are theoretical limitations on the identifiability of underlying structures obtained from observational data alone. Interventional data provides much richer information about the underlying data-generating process. However, the extension and application of methods designed for observational data to include interventions is not straightforward and remains an open problem. In this paper we provide a general framework based on continuous optimization and neural networks to create models for the combination of observational and interventional data. The proposed method is even applicable in the challenging and realistic case that the identity of the intervened upon variable is unknown. We examine the proposed method in the setting of graph recovery both de novo and from a partially-known edge set. We establish strong benchmark results on several structure learning tasks, including structure recovery of both synthetic graphs as well as standard graphs from the Bayesian Network Repository.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.01075
Document Type :
Working Paper