DocumentCode :
1011608
Title :
A competitive minimax approach to robust estimation of random parameters
Author :
Eldar, Yonina C. ; Merhav, Neri
Author_Institution :
Technion-Israel Inst. of Technol., Haifa, Israel
Volume :
52
Issue :
7
fYear :
2004
fDate :
7/1/2004 12:00:00 AM
Firstpage :
1931
Lastpage :
1946
Abstract :
We consider the problem of estimating, in the presence of model uncertainties, a random vector x that is observed through a linear transformation H and corrupted by additive noise. We first assume that both the covariance matrix of x and the transformation H are not completely specified and develop the linear estimator that minimizes the worst-case mean-squared error (MSE) across all possible covariance matrices and transformations H in the region of uncertainty. Although the minimax approach has enjoyed widespread use in the design of robust methods, we show that its performance is often unsatisfactory. To improve the performance over the minimax MSE estimator, we develop a competitive minimax approach for the case where H is known but the covariance of x is subject to uncertainties and seek the linear estimator that minimizes the worst-case regret, namely, the worst-case difference between the MSE attainable using a linear estimator, ignorant of the signal covariance, and the optimal MSE attained using a linear estimator that knows the signal covariance. The linear minimax regret estimator is shown to be equal to a minimum MSE (MMSE) estimator corresponding to a certain choice of signal covariance that depends explicitly on the uncertainty region. We demonstrate, through examples, that the minimax regret approach can improve the performance over both the minimax MSE approach and a "plug in" approach, in which the estimator is chosen to be equal to the MMSE estimator with an estimated covariance matrix replacing the true unknown covariance. We then show that although the optimal minimax regret estimator in the case in which the signal and noise are jointly Gaussian is nonlinear, we often do not lose much by restricting attention to linear estimators.
Keywords :
Wiener filters; covariance matrices; filtering theory; least mean squares methods; minimax techniques; parameter estimation; random processes; MMSE; Wiener filtering; additive noise; competitive minimax approach; covariance matrix; linear estimator; linear minimax regret estimator; linear transformation; mean-squared error; minimum MSE; model uncertainties; random parameters; random vector; robust estimation; signal covariance; Additive noise; Covariance matrix; Design methodology; Gaussian noise; Minimax techniques; Noise robustness; Parameter estimation; Plugs; Uncertainty; Vectors;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2004.828931
Filename :
1306647
Link To Document :
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