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arxiv: 1209.5991 · v1 · pith:CW2SSQ2Vnew · submitted 2012-09-26 · 💻 cs.LG · stat.ML

Subset Selection for Gaussian Markov Random Fields

classification 💻 cs.LG stat.ML
keywords gaussianfieldsmarkovrandomalgorithmfreegivegraphs
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Given a Gaussian Markov random field, we consider the problem of selecting a subset of variables to observe which minimizes the total expected squared prediction error of the unobserved variables. We first show that finding an exact solution is NP-hard even for a restricted class of Gaussian Markov random fields, called Gaussian free fields, which arise in semi-supervised learning and computer vision. We then give a simple greedy approximation algorithm for Gaussian free fields on arbitrary graphs. Finally, we give a message passing algorithm for general Gaussian Markov random fields on bounded tree-width graphs.

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