As an effective tool in pattern recognition and machine learning, support vector machine (SVM) has been adopted abroad. In developing a successful SVM classifier, eliminating noise and extracting feature are very important. This paper proposes the application of kernel PCA to SVM for feature extraction. Then PSO Algorithm is adopted to optimization of these parameters in SVM. The novel time series analysis model integrates the advantage of wavelet, PSO, KPCA and SVM. Compared with other predictors, this model has greater generality ability and higher accuracy. ? 2008 IEEE.EI
dortmund.de Abstract. Time series analysis is an important and complex problem in machine learning a...
In this paper, we propose the application of the Kernel Princi-pal Component Analysis (PCA) techniqu...
Kernel PCA methodology, an elegant nonlinear generalization of the linear PCA, is illustrated by con...
International audienceThis paper investigates the effect of Kernel Principal Component Analysis (KPC...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
The recent trends in collecting huge datasets have posed a great challenge that is brought by the hi...
Abstract — The main objective of this work is to compare the algorithms of Support Vector Machine(SV...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
In this paper, we present a new method for time series forecasting based on wavelet support vector m...
The main goal of this research is to evaluate the role of input selection by Principal Component Ana...
We propose a novel algorithm based on Principal Component Analysis (PCA). First, we present an inter...
dortmund.de Abstract. Time series analysis is an important and complex problem in machine learning a...
In this paper, we propose the application of the Kernel Princi-pal Component Analysis (PCA) techniqu...
Kernel PCA methodology, an elegant nonlinear generalization of the linear PCA, is illustrated by con...
International audienceThis paper investigates the effect of Kernel Principal Component Analysis (KPC...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
Entities and institutional financiers have gained a lot of growth from financial time series forecas...
The recent trends in collecting huge datasets have posed a great challenge that is brought by the hi...
Abstract — The main objective of this work is to compare the algorithms of Support Vector Machine(SV...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
In this paper, we present a new method for time series forecasting based on wavelet support vector m...
The main goal of this research is to evaluate the role of input selection by Principal Component Ana...
We propose a novel algorithm based on Principal Component Analysis (PCA). First, we present an inter...
dortmund.de Abstract. Time series analysis is an important and complex problem in machine learning a...
In this paper, we propose the application of the Kernel Princi-pal Component Analysis (PCA) techniqu...
Kernel PCA methodology, an elegant nonlinear generalization of the linear PCA, is illustrated by con...