Causal Variable

Causal variable identification aims to uncover the underlying factors driving observed phenomena, enabling prediction of intervention effects and improved model robustness. Current research focuses on developing methods that leverage data symmetries and information-theoretic approaches, often employing neural networks, variational autoencoders, or constraint programming within frameworks like invariant causal prediction. These advancements are improving causal discovery in high-dimensional data, with applications ranging from treatment effect estimation in ecology to understanding complex systems like gene regulatory networks and even informing the design of more robust AI systems.

Papers