AI RESEARCH

Causal discovery under mean independence and linearity

arXiv CS.LG

ArXi:2605.04381v1 Announce Type: cross 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