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Performance Analysis of the Gradient Comparator LMS Algorithm

Information Theory 2016-05-11 v1 Machine Learning math.IT

Abstract

The sparsity-aware zero attractor least mean square (ZA-LMS) algorithm manifests much lower misadjustment in strongly sparse environment than its sparsity-agnostic counterpart, the least mean square (LMS), but is shown to perform worse than the LMS when sparsity of the impulse response decreases. The reweighted variant of the ZA-LMS, namely RZA-LMS shows robustness against this variation in sparsity, but at the price of increased computational complexity. The other variants such as the l 0 -LMS and the improved proportionate normalized LMS (IPNLMS), though perform satisfactorily, are also computationally intensive. The gradient comparator LMS (GC-LMS) is a practical solution of this trade-off when hardware constraint is to be considered. In this paper, we analyse the mean and the mean square convergence performance of the GC-LMS algorithm in detail. The analyses satisfactorily match with the simulation results.

Cite

@article{arxiv.1605.02877,
  title  = {Performance Analysis of the Gradient Comparator LMS Algorithm},
  author = {Bijit Kumar Das and Mrityunjoy Chakraborty},
  journal= {arXiv preprint arXiv:1605.02877},
  year   = {2016}
}

Comments

5 pages, 2 figures

R2 v1 2026-06-22T13:57:08.644Z