In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique for feature selection in a high-dimensional feature space, where input variables are mapped by a Gaussian kernel. The extracted features are employed in the regression problems of chaotic Mackey-Glass time-series prediction in a noisy environment and estimating human signal detection performance from brain event-related potentials elicited by task relevant signals. We compared results obtained using either Kernel PCA or linear PCA as data preprocessing steps. On the human signal detection task, we report the superiority of Kernel PCA feature extraction over linear PCA. Similar to linear PCA, we demonstrate de-noising of the original data by ...
Feature extraction of hyperspectral remote sensing data is investigated. Principal component analysi...
fbs mika smola raetsch klausgrst gmd de Algorithms based on Mercer kernels construct their solut...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
In this paper, we propose the application of the Kernel Princi-pal Component Analysis (PCA) techniqu...
In this paper, we propose the application of the Kernel PCA technique for feature selection in high-...
Kernel PCA methodology, an elegant nonlinear generalization of the linear PCA, is illustrated by con...
Kernel PCA as a nonlinear feature extractor has proven powerful as a preprocessing step for classifi...
Kernel PCA as a nonlinear feature extractor has proven powerful as a preprocessing step for classifi...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
Kernel Principal Component Analysis (Kernel PCA) is a useful technique to extract nonlinear structur...
Algorithms based on Mercer kernels construct their solutions in terms of expansions in a high-dimens...
This paper is concerned with the problem of de-noising for non-linear signals. Principal Component A...
A kernel principal component analysis (PCA) was recently proposed as a nonlinear extension of a PCA....
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
International audienceThe inherent physical characteristics of many real-life phenomena, including b...
Feature extraction of hyperspectral remote sensing data is investigated. Principal component analysi...
fbs mika smola raetsch klausgrst gmd de Algorithms based on Mercer kernels construct their solut...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
In this paper, we propose the application of the Kernel Princi-pal Component Analysis (PCA) techniqu...
In this paper, we propose the application of the Kernel PCA technique for feature selection in high-...
Kernel PCA methodology, an elegant nonlinear generalization of the linear PCA, is illustrated by con...
Kernel PCA as a nonlinear feature extractor has proven powerful as a preprocessing step for classifi...
Kernel PCA as a nonlinear feature extractor has proven powerful as a preprocessing step for classifi...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
Kernel Principal Component Analysis (Kernel PCA) is a useful technique to extract nonlinear structur...
Algorithms based on Mercer kernels construct their solutions in terms of expansions in a high-dimens...
This paper is concerned with the problem of de-noising for non-linear signals. Principal Component A...
A kernel principal component analysis (PCA) was recently proposed as a nonlinear extension of a PCA....
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
International audienceThe inherent physical characteristics of many real-life phenomena, including b...
Feature extraction of hyperspectral remote sensing data is investigated. Principal component analysi...
fbs mika smola raetsch klausgrst gmd de Algorithms based on Mercer kernels construct their solut...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...