This brief presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces. Unlike previous approaches that exploit the kernel trick on filtered and then mapped samples, we explicitly define the model recursivity in the Hilbert space. For that, we exploit some properties of functional analysis and recursive computation of dot products without the need of preimaging or a training dataset. We illustrate the feasibility of the methodology in the particular case of the γ-filter, which is an infinite impulse response filter with controlled stability and memory depth. Different algorithmic formulations emerge from the signal model. Experiments in chaotic and electroencephalographic time series prediction, complex nonlinea...
A recursive learning algorithm for the training of widely linear infinite impulse response complex v...
Nowadays, the kernel methods are increasingly developed, they are a significant source of advances, ...
The goal is to present the theory of adaptive signal processing and cover several engineering applic...
This brief presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces....
This paper presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces ...
In kernel methods, temporal information on the data is commonly included by using time-delayed embed...
Abstract—This paper presents a wide framework for non-linear online supervised learning tasks in the...
This paper presents two of the most knowing kernel adaptive filtering (KAF) approaches, the kernel l...
Over the last few years, kernel adaptive filters have gained in importance as the kernel trick starte...
This paper presents a kernelized version of the extended recursive least squares (EX-KRLS) algorithm...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Mechanisms for adapting models, filters, decisions, regulators, and so on to changing properties of ...
The notion of reproducing kernel Hilbert space (RKHS) has emerged in system identification during th...
This paper develops adaptive graph filters that operate in reproducing kernel Hilbert spaces. We con...
Reproducing kernel Hilbert spaces (RKHSs) are key spaces for machine learning that are becoming popu...
A recursive learning algorithm for the training of widely linear infinite impulse response complex v...
Nowadays, the kernel methods are increasingly developed, they are a significant source of advances, ...
The goal is to present the theory of adaptive signal processing and cover several engineering applic...
This brief presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces....
This paper presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces ...
In kernel methods, temporal information on the data is commonly included by using time-delayed embed...
Abstract—This paper presents a wide framework for non-linear online supervised learning tasks in the...
This paper presents two of the most knowing kernel adaptive filtering (KAF) approaches, the kernel l...
Over the last few years, kernel adaptive filters have gained in importance as the kernel trick starte...
This paper presents a kernelized version of the extended recursive least squares (EX-KRLS) algorithm...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Mechanisms for adapting models, filters, decisions, regulators, and so on to changing properties of ...
The notion of reproducing kernel Hilbert space (RKHS) has emerged in system identification during th...
This paper develops adaptive graph filters that operate in reproducing kernel Hilbert spaces. We con...
Reproducing kernel Hilbert spaces (RKHSs) are key spaces for machine learning that are becoming popu...
A recursive learning algorithm for the training of widely linear infinite impulse response complex v...
Nowadays, the kernel methods are increasingly developed, they are a significant source of advances, ...
The goal is to present the theory of adaptive signal processing and cover several engineering applic...