Amortized Causal Discovery: Learning to Infer Causal Graphs from Time-Series Data

Open Access
Authors
Publication date 16-12-2020
Edition v2
Number of pages 25
Publisher Ithaca, NY: ArXiv
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Standard causal discovery methods must fit a new model whenever they encounter samples from a new underlying causal graph. However, these samples often share relevant information - for instance, the dynamics describing the effects of causal relations - which is lost when following this approach. We propose Amortized Causal Discovery, a novel framework that leverages such shared dynamics to learn to infer causal relations from time-series data. This enables us to train a single, amortized model that infers causal relations across samples with different underlying causal graphs, and thus makes use of the information that is shared. We demonstrate experimentally that this approach, implemented as a variational model, leads to significant improvements in causal discovery performance, and show how it can be extended to perform well under hidden confounding.
Document type Working paper
Note Version v1 (18 June 2020) also available on arXiv.org.
Language English
Published at https://arxiv.org/abs/2006.10833v1 https://arxiv.org/abs/2006.10833v2
Downloads
2006.10833v2 (Final published version)
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