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arxiv: 1302.4381 · v3 · pith:COAFIYMJnew · submitted 2013-02-18 · 💻 cs.AI

Reasoning about Independence in Probabilistic Models of Relational Data

classification 💻 cs.AI
keywords relationald-separationmodelsdataindependenceconditionalprobabilistictheory
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We extend the theory of d-separation to cases in which data instances are not independent and identically distributed. We show that applying the rules of d-separation directly to the structure of probabilistic models of relational data inaccurately infers conditional independence. We introduce relational d-separation, a theory for deriving conditional independence facts from relational models. We provide a new representation, the abstract ground graph, that enables a sound, complete, and computationally efficient method for answering d-separation queries about relational models, and we present empirical results that demonstrate effectiveness.

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