Theory

Bivariate LiNGAM Model

In the bivariate case of the Linear Non-Gaussian Acyclic Model (LiNGAM), the variables XX and YY are assumed to be non-Gaussian, and standardized to zero mean and unit variance. The goal is to distinguish between candidate linear causal models. The first model, denoted by X rightarrow Y, is defined as: Y:=ρX+NYY := \rho X + N_Y with X ⁣ ⁣ ⁣NYX \perp \!\!\! \perp N_Y. The second model, with orientation Y rightarrow X, is defined as: X:=ρY+NXX := \rho Y + N_X with Y ⁣ ⁣ ⁣NXY \perp \!\!\! \perp N_X. The parameter ρ\rho is the same in both models because it is equal to the correlation coefficient between XX and YY.

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Updated 2026-06-18

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Data Science

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