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arxiv: 1403.0408 · v2 · pith:HRH6DBRFnew · submitted 2014-03-03 · 🧮 math.PR · stat.ML

On the Intersection Property of Conditional Independence and its Application to Causal Discovery

classification 🧮 math.PR stat.ML
keywords givenindependentintersectionpropertyundercausalconditionalconditions
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This work investigates the intersection property of conditional independence. It states that for random variables $A,B,C$ and $X$ we have that $X$ independent of $A$ given $B,C$ and $X$ independent of $B$ given $A,C$ implies $X$ independent of $(A,B)$ given $C$. Under the assumption that the joint distribution has a continuous density, we provide necessary and sufficient conditions under which the intersection property holds. The result has direct applications to causal inference: it leads to strictly weaker conditions under which the graphical structure becomes identifiable from the joint distribution of an additive noise model.

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