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arxiv: 1202.3737 · v1 · pith:SW2BBBKPnew · submitted 2012-02-14 · 💻 cs.LG · stat.ML

Detecting low-complexity unobserved causes

classification 💻 cs.LG stat.ML
keywords causaldistributionsmarkermethodonlystatisticalunobservedvariable
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We describe a method that infers whether statistical dependences between two observed variables X and Y are due to a "direct" causal link or only due to a connecting causal path that contains an unobserved variable of low complexity, e.g., a binary variable. This problem is motivated by statistical genetics. Given a genetic marker that is correlated with a phenotype of interest, we want to detect whether this marker is causal or it only correlates with a causal one. Our method is based on the analysis of the location of the conditional distributions P(Y|x) in the simplex of all distributions of Y. We report encouraging results on semi-empirical data.

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