Exploiting sparse markov and covariance structure in multiresolution models
Author(s)
Choi, Myung Jin; Chandrasekaran, Venkat; Willsky, Alan S.
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We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to capture statistical dependencies among the finest scale variables. Tree-structured MR models have limited modeling capabilities, as variables at one scale are forced to be uncorrelated with each other conditioned on other scales. We propose a new class of Gaussian MR models that capture the residual correlations within each scale using sparse covariance structure. Our goal is to learn a tree-structured graphical model connecting variables across different scales, while at the same time learning sparse structure for the conditional covariance within each scale conditioned on other scales. This model leads to an efficient, new inference algorithm that is similar to multipole methods in computational physics.
Date issued
2009-06Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science; Massachusetts Institute of Technology. Laboratory for Information and Decision SystemsJournal
International Conference on Machine Learning (ICML) 2009 proceedings
Publisher
Association for Computing Machinery / ACM Digital Library
Citation
Choi, Myung Jin, Venkat Chandrasekaran, and Alan S. Willsky. “Exploiting Sparse Markov
and
Covariance Structure in Multiresolution Models.” Proceedings of the 26th Annual International Conference on Machine Learning - ICML ’09. Montreal, Quebec, Canada, 2009. 1-8. Copyright 2009
by the author(s)/owner(s).
Version: Final published version
ISBN
9781605585161
1605585165