Linear Causal Representation Learning from Unknown Multi-node Interventions
–Neural Information Processing Systems
Despite the multifaceted recent advances in interventional causal representation learning (CRL), they primarily focus on the stylized assumption of single-node interventions. This assumption is not valid in a wide range of applications, and generally, the subset of nodes intervened in an interventional environment is . This paper focuses on interventional CRL under unknown multi-node (UMN) interventional environments and establishes the first identifiability results for latent causal models (parametric or nonparametric) under stochastic interventions (soft or hard) and linear transformation from the latent to observed space. Specifically, it is established that given sufficiently diverse interventional environments, (i) identifiability is possible using only interventions, and (ii) identifiability is possible using interventions. Remarkably, these guarantees match the best-known results for more restrictive single-node interventions. Furthermore, CRL algorithms are also provided that achieve the identifiability guarantees. A central step in designing these algorithms is establishing the relationships between UMN interventional CRL and score functions associated with the statistical models of different interventional environments. Establishing these relationships also serves as constructive proof of the identifiability guarantees.
Neural Information Processing Systems
Dec-27-2025, 07:52:30 GMT
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