Abstract | ||
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Statistical models that possess symmetry arise in diverse settings such as random fields associated to geophysical phenomena, exchangeable processes in Bayesian statistics, and cyclostationary processes in engineering. We formalize the notion of a symmetric model via group invariance. We propose projection on to a group fixed point subspace as a fundamental way of regularizing covariance matrices in the high-dimensional regime. In terms of parameters associated to the group we derive precise rates of convergence of the regularized covariance matrix and demonstrate that significant statistical gains may be expected in terms of the sample complexity. We further explore the consequences of symmetry in related model-selection problems such as the learning of sparse covariance and inverse covariance matrices. We also verify our results with simulations. |
Year | DOI | Venue |
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2012 | 10.1214/12-EJS723 | ELECTRONIC JOURNAL OF STATISTICS |
Keywords | Field | DocType |
Group invariance,covariance selection,exchange-ability,high dimensional asymptotics | Mathematical optimization,Covariance function,Estimation of covariance matrices,Rational quadratic covariance function,Law of total covariance,Covariance matrix,Matérn covariance function,Mathematics,Covariance mapping,Covariance | Conference |
Volume | ISSN | Citations |
6 | 1935-7524 | 5 |
PageRank | References | Authors |
0.47 | 5 | 2 |
Name | Order | Citations | PageRank |
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Parikshit Shah | 1 | 315 | 18.43 |
Venkat Chandrasekaran | 2 | 716 | 37.92 |