Title :
A gradient search interpretation of the super-exponential algorithm
Author :
Mboup, Mamadou ; Regalia, Phillip A.
Author_Institution :
Univ. Rene Descartes, Paris, France
fDate :
11/1/2000 12:00:00 AM
Abstract :
This article reviews the super-exponential algorithm proposed by Shalvi and Weinstein (1993) for blind channel equalization. The principle of this algorithm-Hadamard exponentiation, projection over the set of attainable combined channel-equalizer impulse responses followed by a normalization-is shown to coincide with a gradient search of an extremum of a cost function. The cost function belongs to the family of functions given as the ratio of the standard l2p and l2 sequence norms, where p>1. This family is very relevant in blind channel equalization, tracing back to Donoho´s (1981) work on minimum entropy deconvolution and also underlying the Godard (1980) (or constant modulus) and the earlier Shalvi-Weinstein algorithms. Using this gradient search interpretation, which is more tractable for analytical study, we give a simple proof of convergence for the super-exponential algorithm. Finally, we show that the gradient step-size choice giving rise to the super-exponential algorithm is optimal
Keywords :
blind equalisers; convergence of numerical methods; deconvolution; gradient methods; minimum entropy methods; search problems; transient response; Godard algorithm; Hadamard exponentiation; Shalvi-Weinstein algorithm; channel equalization; channel-equalizer impulse response; constant modulus algorithm; convergence; cost function; gradient search; minimum entropy deconvolution; normalization; optimal gradient step-size; sequence norms; super-exponential algorithm; Algorithm design and analysis; Blind equalizers; Convergence; Cost function; Deconvolution; Entropy; Gradient methods; Higher order statistics; Least squares methods; Minimization methods;
Journal_Title :
Information Theory, IEEE Transactions on