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arxiv: 1404.6617 · v3 · pith:AO7ZBD5Unew · submitted 2014-04-26 · 📊 stat.ME

Faithfulness and learning hypergraphs from discrete distributions

classification 📊 stat.ME
keywords strong-faithfulnessassociationdiscretefaithfulnessconceptsconsistentdifferentdistribution
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The concepts of faithfulness and strong-faithfulness are important for statistical learning of graphical models. Graphs are not sufficient for describing the association structure of a discrete distribution. Hypergraphs representing hierarchical log-linear models are considered instead, and the concept of parametric (strong-) faithfulness with respect to a hypergraph is introduced. Strong-faithfulness ensures the existence of uniformly consistent parameter estimators and enables building uniformly consistent procedures for a hypergraph search. The strength of association in a discrete distribution can be quantified with various measures, leading to different concepts of strong-faithfulness. Lower and upper bounds for the proportions of distributions that do not satisfy strong-faithfulness are computed for different parameterizations and measures of association.

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