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Non-linear Causal Inference using Gaussianity Measures

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We provide theoretical and empirical evidence for a type of asymmetry between causes and effects that is present when these are related via linear models contaminated with additive non-Gaussian noise. Assuming that the causes and the effects have the same distribution, we show that the distribution of the residuals of a linear fit in the anti-causal direction is closer to a Gaussian than the distribution of the residuals in the causal direction. This Gaussianization effect is characterized by reduction of the magnitude of the high-order cumulants and by an increment of the differential entropy of the residuals. The problem of non-linear causal inference is addressed by performing an embedding in an expanded feature space, in which the relation between causes and effects can be assumed to be linear. The effectiveness of a method to discriminate between causes and effects based on this type of asymmetry is illustrated in a variety of experiments using different measures of Gaussianity. The proposed method is shown to be competitive with state-of-the-art techniques for causal inference.

Daniel Hern\'andez-Lobato, Pablo Morales-Mombiela, David Lopez-Paz, Alberto Su\'arez• 2014

Related benchmarks

TaskDatasetResultRank
Causal DiscoveryTübingen
AUROC47
37
Bivariate Causal DiscoveryLS-s
Accuracy0.2
30
Cause-Effect DiscoverySIM-c
Accuracy44
16
Cause-Effect DiscoverySIM-ln
Accuracy43
16
Cause-Effect DiscoverySIM-G
Accuracy37
16
Causal DiscoverySIM
Accuracy48
7
Causal DiscoveryAN (ANLSMN)
Accuracy5
7
Causal DiscoveryANLSMN s
Accuracy6
7
Causal DiscoveryLS
Accuracy11
7
Causal DiscoveryMN-U
Accuracy50
7
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