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Reading Dependencies from Covariance Graphs

Abstract

The covariance graph (aka bi-directed graph) of a probability distribution pp is the undirected graph GG where two nodes are adjacent iff their corresponding random variables are marginally dependent in pp. In this paper, we present a graphical criterion for reading dependencies from GG, under the assumption that pp satisfies the graphoid properties as well as weak transitivity and composition. We prove that the graphical criterion is sound and complete in certain sense. We argue that our assumptions are not too restrictive. For instance, all the regular Gaussian probability distributions satisfy them.

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