With the evidence framework, the regularized linear regression model can be explained as the corresponding MAP problem in this paper, and the general dependency relationships that the optimal parameters in this model with noisy input should follow is then derived. The support vector regression machines Huber-SVR and Norm-r r-SVR are two typical examples of this model and their optimal parameter choices are paid particular attention. It turns out that with the existence of the typical Gaussian noisy input, the parameter μ in Huber-SVR has the linear dependency with the input noise, and the parameter r in the r-SVR has the inversely proportional to the input noise. The theoretical results here will be helpful for us to apply kernel-based regr...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
We focus on a selection of kernel parameters in the framework of the relevance vector machine (RVM) ...
In [1], with the evidence framework, the almost inversely linear dependency between the optimal para...
In Support Vector (SV) regression, a parameter ν controls the number of Support Vectors and the numb...
In this paper, we propose a method to select support vectors to improve the performance of support v...
We study the relation between support vector machines (SVMs) for regression (SVMR) and SVM for class...
AbstractThe classical support vector machines regression (SVMR) is known as a regularized learning a...
The insensitivity parameter in support vector regression determines the set of support vectors that ...
The support vector machine (SVM) algorithm is well known to the computer learning community for its ...
In this report we show some consequences of the work done by Pontil et al. in [1]. In particular we ...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
In support vector (SV) regression, a parameter /spl nu/ controls the number of support vectors and t...
In this research, a robust optimization approach applied to support vector regression (SVR) is inves...
We study the relation between support vector machines (SVMs) for regression (SVMR) and SVM for class...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
We focus on a selection of kernel parameters in the framework of the relevance vector machine (RVM) ...
In [1], with the evidence framework, the almost inversely linear dependency between the optimal para...
In Support Vector (SV) regression, a parameter ν controls the number of Support Vectors and the numb...
In this paper, we propose a method to select support vectors to improve the performance of support v...
We study the relation between support vector machines (SVMs) for regression (SVMR) and SVM for class...
AbstractThe classical support vector machines regression (SVMR) is known as a regularized learning a...
The insensitivity parameter in support vector regression determines the set of support vectors that ...
The support vector machine (SVM) algorithm is well known to the computer learning community for its ...
In this report we show some consequences of the work done by Pontil et al. in [1]. In particular we ...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
In support vector (SV) regression, a parameter /spl nu/ controls the number of support vectors and t...
In this research, a robust optimization approach applied to support vector regression (SVR) is inves...
We study the relation between support vector machines (SVMs) for regression (SVMR) and SVM for class...
The purpose of the paper is to apply a nonlinear programming algorithm for com-puting kernel and rel...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
We focus on a selection of kernel parameters in the framework of the relevance vector machine (RVM) ...