English

General Identifiability and Achievability for Causal Representation Learning

Machine Learning 2024-02-15 v2 Machine Learning

Abstract

This paper focuses on causal representation learning (CRL) under a general nonparametric latent causal model and a general transformation model that maps the latent data to the observational data. It establishes identifiability and achievability results using two hard uncoupled interventions per node in the latent causal graph. Notably, one does not know which pair of intervention environments have the same node intervened (hence, uncoupled). For identifiability, the paper establishes that perfect recovery of the latent causal model and variables is guaranteed under uncoupled interventions. For achievability, an algorithm is designed that uses observational and interventional data and recovers the latent causal model and variables with provable guarantees. This algorithm leverages score variations across different environments to estimate the inverse of the transformer and, subsequently, the latent variables. The analysis, additionally, recovers the identifiability result for two hard coupled interventions, that is when metadata about the pair of environments that have the same node intervened is known. This paper also shows that when observational data is available, additional faithfulness assumptions that are adopted by the existing literature are unnecessary.

Keywords

Cite

@article{arxiv.2310.15450,
  title  = {General Identifiability and Achievability for Causal Representation Learning},
  author = {Burak Varıcı and Emre Acartürk and Karthikeyan Shanmugam and Ali Tajer},
  journal= {arXiv preprint arXiv:2310.15450},
  year   = {2024}
}

Comments

Accepted to AISTATS 2024 (oral presentation). Also appeared at CRL Workshop @ NeurIPS 2023 (oral presentation) titled as "Score-based Causal Representation Learning: Nonparametric Identifiability"

R2 v1 2026-06-28T12:59:42.914Z