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Causal Discovery with Score Matching on Additive Models with Arbitrary Noise

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Causal discovery methods are intrinsically constrained by the set of assumptions needed to ensure structure identifiability. Moreover additional restrictions are often imposed in order to simplify the inference task: this is the case for the Gaussian noise assumption on additive non-linear models, which is common to many causal discovery approaches. In this paper we show the shortcomings of inference under this hypothesis, analyzing the risk of edge inversion under violation of Gaussianity of the noise terms. Then, we propose a novel method for inferring the topological ordering of the variables in the causal graph, from data generated according to an additive non-linear model with a generic noise distribution. This leads to NoGAM (Not only Gaussian Additive noise Models), a causal discovery algorithm with a minimal set of assumptions and state of the art performance, experimentally benchmarked on synthetic data.

Francesco Montagna, Nicoletta Noceti, Lorenzo Rosasco, Kun Zhang, Francesco Locatello• 2023

Related benchmarks

TaskDatasetResultRank
Causal Structure LearningSachs
SHD14
20
Causal OrderingSyntren
ODR39
12
Causal OrderingSachs
ODR65
12
Runtime EfficiencySynthetic Graphs d=5
Runtime (s)1.243
12
Runtime EfficiencySynthetic Graphs d=10
Runtime (seconds)4.251
12
Runtime EfficiencySynthetic Graphs d=20
Runtime (seconds)14.864
12
Runtime EfficiencySynthetic Graphs d=50
Runtime (seconds)92.578
12
Runtime EfficiencySynthetic Graphs d=100
Runtime (s)370.3
12
Causal Structure LearningSyntren
SHD66
5
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