Supervised classifiers for high-dimensional higher-order data with locally doubly exchangeable covariance structure |
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Authors: | Tatjana Pavlenko Anuradha Roy |
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Affiliation: | 1. Departament of Mathematics, Royal Institute of Technology KTH, Stockholm, Sweden;2. Department of Management Science and Statistics, The University of Texas at San Antonio, One UTSA Circle, San Antonio, TX, USA |
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Abstract: | We explore the performance accuracy of the linear and quadratic classifiers for high-dimensional higher-order data, assuming that the class conditional distributions are multivariate normal with locally doubly exchangeable covariance structure. We derive a two-stage procedure for estimating the covariance matrix: at the first stage, the Lasso-based structure learning is applied to sparsifying the block components within the covariance matrix. At the second stage, the maximum-likelihood estimators of all block-wise parameters are derived assuming the doubly exchangeable within block covariance structure and a Kronecker product structured mean vector. We also study the effect of the block size on the classification performance in the high-dimensional setting and derive a class of asymptotically equivalent block structure approximations, in a sense that the choice of the block size is asymptotically negligible. |
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Keywords: | Class of asymptotically equivalent structure approximations classification rule graphical Lasso high-dimensional higher-order data locally doubly exchangeable covariance structure. |
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