Title :
James-Stein state filtering algorithms
Author :
Manton, Jonathan H. ; Krishnamurthy, Vikram ; Poor, H. Vincent
Author_Institution :
Dept. of Electr. & Electron. Eng., Melbourne Univ., Parkville, Vic., Australia
Abstract :
In 1961, James and Stein discovered a remarkable estimator that dominates the maximum-likelihood estimate of the mean of a p-variate normal distribution, provided the dimension p is greater than two. This paper extends the James-Stein estimator and highlights the benefits of applying these extensions to adaptive signal processing problems. The main contribution of this paper is the derivation of the James-Stein state filter (JSSF), which is a robust version of the Kalman filter. The JSSF is designed for situations where the parameters of the state-space evolution model are not known with any certainty. In deriving the JSSF, we derive several other results. We first derive a James-Stein estimator for estimating the regression parameter in a linear regression. A recursive implementation, which we call the James-Stein recursive least squares (JS-RLS) algorithm, is derived. The resulting estimate, although biased, has a smaller mean-square error than the traditional RLS algorithm. Finally, several heuristic algorithms are presented, including a James-Stein version of the Yule-Walker equations for AR parameter estimation.
Keywords :
adaptive Kalman filters; adaptive estimation; adaptive signal processing; autoregressive processes; filtering theory; least squares approximations; maximum likelihood estimation; normal distribution; state-space methods; AR parameter estimation; James-Stein estimator; James-Stein recursive least squares; James-Stein state filter; James-Stein state filtering algorithms; Kalman filter; RLS algorithm; Yule-Walker equations; adaptive signal processing; heuristic algorithms; linear regression; maximum-likelihood estimate; mean; mean-square error; normal distribution; recursive implementation; regression parameter; state-space evolution model; Adaptive signal processing; Filtering algorithms; Filters; Gaussian distribution; Least squares methods; Linear regression; Maximum likelihood estimation; Parameter estimation; Robustness; Signal processing algorithms;
Journal_Title :
Signal Processing, IEEE Transactions on