English

Beyond identifiability: Learning causal representations with few environments and finite samples

Machine Learning 2026-03-30 v1 Artificial Intelligence Machine Learning Statistics Theory Statistics Theory

Abstract

We provide explicit, finite-sample guarantees for learning causal representations from data with a sublinear number of environments. Causal representation learning seeks to provide a rigourous foundation for the general representation learning problem by bridging causal models with latent factor models in order to learn interpretable representations with causal semantics. Despite a blossoming theory of identifiability in causal representation learning, estimation and finite-sample bounds are less well understood. We show that causal representations can be learned with only a logarithmic number of unknown, multi-node interventions, and that the intervention targets need not be carefully designed in advance. Through a careful perturbation analysis, we provide a new analysis of this problem that guarantees consistent recovery of (a) the latent causal graph, (b) the mixing matrix and representations, and (c) \emph{unknown} intervention targets.

Keywords

Cite

@article{arxiv.2603.25796,
  title  = {Beyond identifiability: Learning causal representations with few environments and finite samples},
  author = {Inbeom Lee and Tongtong Jin and Bryon Aragam},
  journal= {arXiv preprint arXiv:2603.25796},
  year   = {2026}
}
R2 v1 2026-07-01T11:39:46.479Z