2015
DOI: 10.48550/arxiv.1508.05232
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Variable-mixing parameter quantized kernel robust mixed-norm algorithms for combating impulsive interference

Lu Lu,
Haiquan Zhao,
Badong Chen

Abstract: Although the kernel robust mixed-norm (KRMN) algorithm outperforms the kernel least mean square (KLMS) algorithm in impulsive noise, it still has two major problems as follows: (1) The choice of the mixing parameter in the KRMN is crucial to obtain satisfactory performance. (2) The structure of the KRMN algorithm grows linearly as the iteration goes on, thus it has high computational complexity and memory requirements. To solve the parameter selection problem, two variable-mixing parameter KRMN (VPKRMN) algori… Show more

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