Title :
Sparsity regularised recursive least squares adaptive filtering
Author :
Eksioglu, Ender M.
Author_Institution :
Electron. & Commun. Eng. Dept., Istanbul Tech. Univ., Istanbul, Turkey
fDate :
8/1/2011 12:00:00 AM
Abstract :
The authors propose a new approach for the adaptive identification of sparse systems. This approach improves on the recursive least squares (RLS) algorithm by adding a sparsity inducing weighted ℓ1 norm penalty to the RLS cost function. Subgradient analysis is utilised to develop the recursive update equations for the calculation of the optimum system estimate, which minimises the regularised cost function. Two new algorithms are introduced by considering two different weighting scenarios for the ℓ1 norm penalty. These new ℓ1 relaxation-based RLS algorithms emphasise sparsity during the adaptive filtering process, and they allow for faster convergence than standard RLS when the system under consideration is sparse. The authors test the performance of the novel algorithms and compare it with standard RLS and other adaptive algorithms for sparse system identification.
Keywords :
adaptive filters; least squares approximations; sparse matrices; RLS cost function; adaptive filtering; adaptive identification; norm penalty; optimum system estimate; sparse system identification; sparsity regularised recursive least squares; subgradient analysis;
Journal_Title :
Signal Processing, IET
DOI :
10.1049/iet-spr.2010.0083