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arxiv: 1310.5666 · v1 · pith:3U5CJQCBnew · submitted 2013-10-21 · 📊 stat.ML

Distributed parameter estimation of discrete hierarchical models via marginal likelihoods

classification 📊 stat.ML
keywords neighborhoodmarginalmethodsobtaineddiscretedistributedestimatelikelihood
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We consider discrete graphical models Markov with respect to a graph $G$ and propose two distributed marginal methods to estimate the maximum likelihood estimate of the canonical parameter of the model. Both methods are based on a relaxation of the marginal likelihood obtained by considering the density of the variables represented by a vertex $v$ of $G$ and a neighborhood. The two methods differ by the size of the neighborhood of $v$. We show that the estimates are consistent and that those obtained with the larger neighborhood have smaller asymptotic variance than the ones obtained through the smaller neighborhood.

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