This paper introduces the kernel signal-to-noise ratio (kSNR) for different machine learning and signal processing applications}. The kSNR seeks to maximize the signal variance while minimizing the estimated noise variance explicitly in a reproducing kernel Hilbert space (rkHs). The kSNR gives rise to considering complex signal-to-noise relations beyond additive noise models, and can be seen as a useful signal-to-noise regularizer for feature extraction and dimensionality reduction. We show that the kSNR generalizes kernel PCA (and other spectral dimensionality reduction methods), least squares SVM, and kernel ridge regression to deal with cases where signal and noise cannot be assumed independent. We give computationally efficient alternat...
We propose kTDSEP, a kernel-based algorithm for nonlinear blind source separation (BSS). It combines...
Abstract—Kernel adaptive filters have drawn increasing attention due to their advantages such as uni...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
The first topic focuses on the dimension reduction method via the regularization. We propose the sel...
Recently introduced in Machine Learning, the notion of kernels has drawn a lot of interest as it all...
This paper presents an optimized kernel minimum noise fraction transformation (OKMNF) for feature ex...
Several disciplines, from engineering to social sciences, critically depend on adaptive signal estim...
This paper presents two of the most knowing kernel adaptive filtering (KAF) approaches, the kernel l...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
This paper presents an optimized kernel minimum noise fraction transformation (OKMNF) for feature ex...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
Nonparametric inference techniques provide promising tools for probabilistic reasoning in high-dime...
This paper addresses the problem of choosing a kernel suitable for estimation with a support vector...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
We propose kTDSEP, a kernel-based algorithm for nonlinear blind source separation (BSS). It combines...
Abstract—Kernel adaptive filters have drawn increasing attention due to their advantages such as uni...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
The first topic focuses on the dimension reduction method via the regularization. We propose the sel...
Recently introduced in Machine Learning, the notion of kernels has drawn a lot of interest as it all...
This paper presents an optimized kernel minimum noise fraction transformation (OKMNF) for feature ex...
Several disciplines, from engineering to social sciences, critically depend on adaptive signal estim...
This paper presents two of the most knowing kernel adaptive filtering (KAF) approaches, the kernel l...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
This paper presents an optimized kernel minimum noise fraction transformation (OKMNF) for feature ex...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
Nonparametric inference techniques provide promising tools for probabilistic reasoning in high-dime...
This paper addresses the problem of choosing a kernel suitable for estimation with a support vector...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
We propose kTDSEP, a kernel-based algorithm for nonlinear blind source separation (BSS). It combines...
Abstract—Kernel adaptive filters have drawn increasing attention due to their advantages such as uni...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...