Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/5233
Title: Kernel Adaptive Filtering Based on Maximum Versoria Criterion
Authors: Jain, Sandesh
Bhatia, Vimal
Keywords: Adaptive filters;Cost functions;Gaussian distribution;Gaussian noise (electronic);Hilbert spaces;Probability density function;Vector spaces;Computationally efficient;Correntropy;Information theoretic learning;Kernel adaptive filtering;Kernel leastmean-square (KLMS);maximum Versoria criterion (MVC);Nonlinear and non-Gaussian;Reproducing Kernel Hilbert spaces;Adaptive filtering
Issue Date: 2018
Publisher: IEEE Computer Society
Citation: Jain, S., Mitra, R., & Bhatia, V. (2018). Kernel adaptive filtering based on maximum versoria criterion. Paper presented at the International Symposium on Advanced Networks and Telecommunication Systems, ANTS, , 2018-December doi:10.1109/ANTS.2018.8710152
Abstract: Information theoretic learning based approaches have been combined with the framework of reproducing kernel Hilbert space (RKHS) based techniques for nonlinear and non-Gaussian signal processing applications. In particular, generalized kernel maximum correntropy (GKMC) algorithm has been proposed in the literature which adopts generalized Gaussian probability density function (GPDF) as the cost function in order to train the filter weights. Recently, a more flexible and computationally efficient algorithm called maximum Versoria criterion (MVC) which adopts the generalized Versoria function as the adaptation cost has been proposed in the literature which delivers better performance as compared to the maximum correntropy criterion. In this paper, we propose a novel generalized kernel maximum Versoria criterion (GKMVC) algorithm which combines the advantages of RKHS based approaches and MVC algorithm. Further, a novelty criterion based dictionary sparsification technique as suggested for kernel least mean square (KLMS) algorithm is proposed for GKMVC algorithm for reducing its computational complexity. Furthermore, an analytical upper bound on step-size is also derived in order to ensure the convergence of the proposed algorithm. Simulations are performed over various non-Gaussian noise distributions which indicate that the proposed GKMVC algorithm exhibits superior performance in terms of lower steady-state error floor as compared to the existing algorithms, namely the KLMS and the GKMC algorithms. © 2018 IEEE.
URI: https://doi.org/10.1109/ANTS.2018.8710152
https://dspace.iiti.ac.in/handle/123456789/5233
ISBN: 9781538681343
ISSN: 2153-1684
Type of Material: Conference Paper
Appears in Collections:Department of Electrical Engineering

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