In this paper, we demonstrate the use of support vector regression (SVR) techniques for black-box system identification. These methods derive from statistical learning theory, and are of great theoretical and practical interest. We briefly describe the theory underpinning SVR, and compare support vector methods with other approaches using radial basis networks. Finally, we apply SVR to modeling the behaviour of a hydraulic robot arm, and show that SVR improves on previously published results
Instead of minimizing the observed training error, Support Vector Regression (SVR) attempts to minim...
Abstract. This paper deals with the application of the Support Vector Method (SVM) methodology to th...
This paper compares a wide variety of neural network architectures applied in the context of black-b...
In this paper, we demonstrate the use of support vector regression (SVR) techniques for black-box sy...
In this paper, we demonstrate the use of support vector regression (SVR) techniques for black-box sy...
Abstract: Support Vector Machines (SVM) have become a subject of intensive study in sta-tistical lea...
In this paper, a system identification method for linear regression models based on support vector m...
In this document we propose the use of a widely known learning-from-examples paradigm, namely the Su...
Abstract—As an emerging non-parametric modeling technique, the methodology of support vector regress...
Abstract—In this paper, a nonlinear system identification based on support vector machines (SVM) has...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
In this work we deal with the application of Support Vector Machines for Regression (SVRs) to the pr...
This paper presents a new approach to auto-regressive and moving average (ARMA) modeling based on th...
This paper describes the common framework for these approaches. It is pointed out that the nonlinear...
This paper considers the identification of Wiener-Hammerstein systems using Least-Squares Support Ve...
Instead of minimizing the observed training error, Support Vector Regression (SVR) attempts to minim...
Abstract. This paper deals with the application of the Support Vector Method (SVM) methodology to th...
This paper compares a wide variety of neural network architectures applied in the context of black-b...
In this paper, we demonstrate the use of support vector regression (SVR) techniques for black-box sy...
In this paper, we demonstrate the use of support vector regression (SVR) techniques for black-box sy...
Abstract: Support Vector Machines (SVM) have become a subject of intensive study in sta-tistical lea...
In this paper, a system identification method for linear regression models based on support vector m...
In this document we propose the use of a widely known learning-from-examples paradigm, namely the Su...
Abstract—As an emerging non-parametric modeling technique, the methodology of support vector regress...
Abstract—In this paper, a nonlinear system identification based on support vector machines (SVM) has...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
In this work we deal with the application of Support Vector Machines for Regression (SVRs) to the pr...
This paper presents a new approach to auto-regressive and moving average (ARMA) modeling based on th...
This paper describes the common framework for these approaches. It is pointed out that the nonlinear...
This paper considers the identification of Wiener-Hammerstein systems using Least-Squares Support Ve...
Instead of minimizing the observed training error, Support Vector Regression (SVR) attempts to minim...
Abstract. This paper deals with the application of the Support Vector Method (SVM) methodology to th...
This paper compares a wide variety of neural network architectures applied in the context of black-b...