CausalDiffAE, a diffusion-based framework for learning disentangled causal representations and enabling controllable counterfactual generation.
It is possible to estimate domain counterfactuals without recovering the full latent causal structure by leveraging the invertibility and sparsity of the causal mechanisms.
Under sparsity constraints on the recovered latent graph and sufficient changes in the causal influences, the hidden causal variables and their causal relations can be recovered up to specific, relatively minor indeterminacies.
Adapting causal representations for new environments using DECAF framework.