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Causal Discovery with Continuous Additive Noise Models

About

We consider the problem of learning causal directed acyclic graphs from an observational joint distribution. One can use these graphs to predict the outcome of interventional experiments, from which data are often not available. We show that if the observational distribution follows a structural equation model with an additive noise structure, the directed acyclic graph becomes identifiable from the distribution under mild conditions. This constitutes an interesting alternative to traditional methods that assume faithfulness and identify only the Markov equivalence class of the graph, thus leaving some edges undirected. We provide practical algorithms for finitely many samples, RESIT (Regression with Subsequent Independence Test) and two methods based on an independence score. We prove that RESIT is correct in the population setting and provide an empirical evaluation.

Jonas Peters, Joris Mooij, Dominik Janzing, Bernhard Sch\"olkopf• 2013

Related benchmarks

TaskDatasetResultRank
Bivariate Causal DiscoverySIM-c
Accuracy82
33
Bivariate Causal DiscoveryQd-V
Accuracy80
33
Bivariate Causal DiscoverySIM
Accuracy78
33
Bivariate Causal DiscoveryD4 s1
Accuracy58
33
Bivariate Causal DiscoveryAN
Accuracy99
33
Bivariate Causal DiscoveryPER
Accuracy70
33
Bivariate Causal DiscoveryLS
Accuracy72
33
Bivariate Causal DiscoveryNN-V
Accuracy61
33
Bivariate Causal DiscoveryNet
Accuracy76
33
Bivariate Causal DiscoveryTue
Accuracy63
33
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