Causal discovery under mean independence and linearity

📅 2026-05-05
📈 Citations: 0
Influential: 0
📄 PDF

career value

188K/year
📝 Abstract
Causal discovery methods such as LiNGAM identify causal structure from observational data by assuming mutually independent disturbances. This assumption is fragile: shared volatility, common scale effects, or other forms of dependence can cause the methods to recover the wrong causal order, even with infinite data. We introduce the Linear Mean-Independent Acyclic Model (LiMIAM), which replaces full independence with weaker one-sided mean-independence restrictions on the disturbances. Under finite-order consequences of these restrictions, source nodes are generically identifiable, and hence a compatible causal order can be recovered recursively. Our proof is constructive and leads to DirectLiMIAM, a sequential residual-based algorithm for causal discovery under dependent noise. In simulations with mean-independent but dependent disturbances, DirectLiMIAM outperforms LiNGAM methods. A large-scale empirical application to the oil market highlights the implausibility of the independence assumption and the ability of DirectLiMIAM to recover a realistic causal ordering, from policy to production and from prices to inflation.
Problem

Research questions and friction points this paper is trying to address.

causal discovery
mean independence
dependent noise
causal order
LiNGAM
Innovation

Methods, ideas, or system contributions that make the work stand out.

causal discovery
mean independence
LiMIAM
dependent noise
DirectLiMIAM
🔎 Similar Papers
No similar papers found.