Performance Analysis of l0 Norm Constraint Least Mean Square AlgorithmDownload PDF

Guolong Su, Jian Jin, Yuantao Gu, Jian Wang

26 Sept 2020 (modified: 26 Sept 2020)OpenReview Archive Direct UploadReaders: Everyone
Abstract: As one of the recently proposed algorithms for sparse system identification, norm constraint Least Mean Square (l0 -LMS) algorithm modifies the cost function of the traditional method with a penalty of tap-weight sparsity. The performance of l0 -LMS is quite attractive compared with its various precursors. However, there has been no detailed study of its performance. This paper presents comprehensive theoretical performance analysis of l0 -LMS for white Gaussian input data based on some reasonable assumptions, which are reasonable in a large range of parameter setting. Expressions for steady-state mean square deviation (MSD) are derived and discussed with respect to algorithm parameters and system sparsity. The parameter selection rule is established for achieving the best performance. Approximated with Taylor series, the instantaneous behavior is also derived. In addition, the relationship between l0 -LMS and some previous arts and the sufficient conditions for l0 -LMS to accelerate convergence are set up. Finally, all of the theoretical results are compared with simulations and are shown to agree well in a wide range of parameters
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