EcoSta 2024: Start Registration
View Submission - EcoSta 2025
A0702
Title: An extended LiNGAM that allows confounding Authors:  Joe Suzuki - University of Osaka (Japan) [presenting]
Abstract: LiNGAM determines the variable order from cause to effect using additive noise models, but it faces challenges with confounding. Previous methods maintained LiNGAM's fundamental structure while trying to identify and address variables affected by confounding. As a result, these methods required significant computational resources regardless of the presence of confounding, and they did not ensure the detection of all confounding types. In contrast, LiNGAM is enhanced by introducing LiNGAM-MMI, a method that quantifies the magnitude of confounding using KL divergence and arranges the variables to minimize its impact. This method efficiently achieves a globally optimal variable order through the shortest path problem formulation. LiNGAM-MMI processes data as efficiently as traditional LiNGAM in scenarios without confounding while effectively addressing confounding situations. The experimental results suggest that LiNGAM-MMI more accurately determines the correct variable order, both in the presence and absence of confounding.