AI RESEARCH

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

arXiv CS.AI

ArXi:2603.25796v1 Announce Type: cross 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.