Title :
Online model selection and learning by multikernel adaptive filtering
Author :
Yukawa, Masahiro ; Ishii, Ryu-ichiro
Author_Institution :
Dept. Electron. & Electr. Eng., Keio Univ., Yokohama, Japan
Abstract :
We propose an efficient multikernel adaptive filtering algorithm with double regularizers, providing a novel pathway towards online model selection and learning. The task is the challenging nonlinear adaptive filtering under no knowledge about a suitable kernel. Under this limited-knowledge assumption on an underlying model of a system of interest, many possible kernels are employed and one of the regularizers, a block ℓ1 norm for kernel groups, contributes to selecting a proper model (relevant kernels) in online and adaptive fashion, preventing a nonlinear filter from overfitting to noisy data. The other regularizer is the block ℓ1 norm for data groups, contributing to updating the dictionary adaptively. As the resulting cost function contains two nonsmooth (but proximable) terms, we approximate the latter regularizer by its Moreau envelope and apply the adaptive proximal forward-backward splitting method to the approximated cost function. Numerical examples show the efficacy of the proposed algorithm.
Keywords :
adaptive filters; learning (artificial intelligence); least mean squares methods; Moreau envelope; adaptive proximal forward backward splitting method; approximated cost function; double regularizers; multikernel adaptive filtering; nonlinear adaptive filtering; online model selection and learning; Adaptation models; Cost function; Dictionaries; Estimation; Kernel; Noise; Vectors; kernel adaptive filter; multiple kernels; proximity operator;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2013 Proceedings of the 21st European
Conference_Location :
Marrakech