Beyond identifiability: Learning causal representations with few environments and finite samples
Lee, Inbeom, Jin, Tongtong, Aragam, Bryon
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.
Mar-30-2026
- Country:
- Asia
- Japan > Honshū
- Tōhoku > Iwate Prefecture > Morioka (0.04)
- Middle East > Jordan (0.04)
- Japan > Honshū
- Europe
- Spain > Catalonia
- Barcelona Province > Barcelona (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- Spain > Catalonia
- Asia
- Genre:
- Research Report (1.00)
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- Technology: