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Optimal uncertainty size in distributionally robust inverse covariance estimation
Authors:Jose Blanchet  Nian Si
Abstract:In a recent paper, Nguyen et al. (2018) built a distributionally robust estimator for the precision matrix of the Gaussian distribution. The distributional uncertainty size is a key ingredient in the construction of this estimator. We develop a statistical theory which shows how to optimally choose the uncertainty size to minimize the associated Stein loss. Surprisingly, rather than the expected canonical square-root scaling rate, the optimal uncertainty size scales linearly with the sample size.
Keywords:Correspondence to: Huang Engineering Center  475 Via Ortega  Stanford  CA 94305  United States    Distributionally robust optimization  Wasserstein distance  Covariance matrix
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