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arXiv: 1805.07194
Note. The best result in each experiment is highlighted in bold.The optimal solutions of many decision problems such as the Markowitz portfolio allocation and the linear discriminant analysis depend on the inverse covariance matrix of a Gaussian random vector. In “Distributionally Robust Inverse Covariance Estimation: The Wasserstein Shrinkage Estimator,” Nguyen, Kuhn, and Mohajerin Esfahani propose a distributionally robust inverse covariance estimator, obtained by robustifying the Gaussian maximum likelihood problem with a Wasserstein ambiguity set. In the absence of any prior structural information, the estimation problem has an analytical solution that is naturally interpreted as a nonlinear shrinkage estimator. Besides being invertible and well conditioned, the new shrinkage estimator is rotation equivariant and preserves the order of the eigenvalues of the sample covariance matrix. If there are sparsity constraints, which are typically encountered in Gaussian graphical models, the estimation problem can be solved using a sequential quadratic approximation algorithm.
data-driven optimization, FOS: Computer and information sciences, distributionally robust optimization, machine learning and data science, maximum likelihood estimation, Machine Learning (stat.ML), 310, FOS: Economics and business, Portfolio Management (q-fin.PM), Statistics - Machine Learning, FOS: Mathematics, Semidefinite programming, Wasserstein distance, Shrinkage estimator, Mathematics - Optimization and Control, Quantitative Finance - Portfolio Management, Maximum likelihood estimation, Robustness in mathematical programming, shrinkage estimator, Data-driven optimization, Applications of mathematical programming, Optimization and Control (math.OC), Distributionally robust optimization
data-driven optimization, FOS: Computer and information sciences, distributionally robust optimization, machine learning and data science, maximum likelihood estimation, Machine Learning (stat.ML), 310, FOS: Economics and business, Portfolio Management (q-fin.PM), Statistics - Machine Learning, FOS: Mathematics, Semidefinite programming, Wasserstein distance, Shrinkage estimator, Mathematics - Optimization and Control, Quantitative Finance - Portfolio Management, Maximum likelihood estimation, Robustness in mathematical programming, shrinkage estimator, Data-driven optimization, Applications of mathematical programming, Optimization and Control (math.OC), Distributionally robust optimization
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