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On the Complexity of Identification in Linear Structural Causal Models

17 July 2024
Julian Dörfler
Benito van der Zander
Markus Bläser
Maciej Liskiewicz
    CML
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Abstract

Learning the unknown causal parameters of a linear structural causal model is a fundamental task in causal analysis. The task, known as the problem of identification, asks to estimate the parameters of the model from a combination of assumptions on the graphical structure of the model and observational data, represented as a non-causal covariance matrix. In this paper, we give a new sound and complete algorithm for generic identification which runs in polynomial space. By standard simulation results, this algorithm has exponential running time which vastly improves the state-of-the-art double exponential time method using a Gr\"obner basis approach. The paper also presents evidence that parameter identification is computationally hard in general. In particular, we prove, that the task asking whether, for a given feasible correlation matrix, there are exactly one or two or more parameter sets explaining the observed matrix, is hard for ∀R\forall R∀R, the co-class of the existential theory of the reals. In particular, this problem is coNPcoNPcoNP-hard. To our best knowledge, this is the first hardness result for some notion of identifiability.

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