Multikernel least mean square algorithm

Tobar F.A.; Kung S.-Y.; Mandic D.P.

Abstract

The multikernel least-mean-square algorithm is introduced for adaptive estimation of vector-valued nonlinear and nonstationary signals. This is achieved by mapping the multivariate input data to a Hilbert space of time-varying vector-valued functions, whose inner products (kernels) are combined in an online fashion. The proposed algorithm is equipped with novel adaptive sparsification criteria ensuring a finite dictionary, and is computationally efficient and suitable for nonstationary environments. We also show the ability of the proposed vector-valued reproducing kernel Hilbert space to serve as a feature space for the class of multikernel least-squares algorithms. The benefits of adaptive multikernel (MK) estimation algorithms are illuminated in the nonlinear multivariate adaptive prediction setting. Simulations on nonlinear inertial body sensor signals and nonstationary real-world wind signals of low, medium, and high dynamic regimes support the approach. © 2013 IEEE.

Más información

Título según SCOPUS: Multikernel least mean square algorithm
Título de la Revista: IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS
Volumen: 25
Número: 2
Editorial: IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Fecha de publicación: 2014
Página de inicio: 265
Página final: 277
Idioma: English
DOI:

10.1109/TNNLS.2013.2272594

Notas: SCOPUS