4.7 Article

A minimax Chebyshev estimator for bounded error estimation

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 56, Issue 4, Pages 1388-1397

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2007.908945

Keywords

bounded error estimation; Chebysbev center; constrained least-squares; semidefinite programming; semidefinite relaxation

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We develop a nonlinear minimax estimator for the classical linear regression model assuming that the true parameter vector lies in an intersection of ellipsoids. We seek an estimate that minimizes the worst-case estimation error over the given parameter set. Since this problem is intractable, we approximate it using semidefinite relaxation, and refer to the resulting estimate as the relaxed Chebyshev center (RCC). We show that the RCC is unique and feasible, meaning it is consistent with the prior information. We then prove that the constrained least-squares (CLS) estimate for this problem can also be obtained as a relaxation of the Chebyshev center, that is looser than the RCC. Finally, we demonstrate through simulations that the RCC can significantly improve the estimation error over the CLS method.

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