We propose a new class of support vector algorithms for regression and classification. In these algorithms, a parameter nu} lets one effectively control the number of support vectors. While this can be useful in its own right, the parameterization has the additional benefit of enabling us to eliminate one of the other free parameters of the algorithm: the accuracy parameter {epsilon} in the regression case, and the regularization constant C in the classification case. We describe the algorithms, give some theoretical results concerning the meaning and the choice of {nu, and report experimental results
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
A new algorithm for Support Vector regression is described. For a priori chosen 1/, it automatically...
We have recently proposed a new approach to control the number of basis functions and the accuracy i...
We propose a new class of support vector algorithms for regression and classification. In these algo...
In the present paper we describe a new algorithm for Support Vector Regression (SVR). Like the stan...
In support vector (SV) regression, a parameter /spl nu/ controls the number of support vectors and t...
Many recently proposed learning algorithms are clearly inspired by Support Vector Machines. Some of ...
A new algorithm for Support Vector regression is proposed. For a priori chosen ν, it automatically a...
In this tutorial we give an overview of the basic ideas underlying Support Vector (SV) machines for ...
The hyperparameters in support vector regression (SVR) determine the effectiveness of the support ve...
Support Vector Machines are a modern method assigned to the field of artificial intelligence. This m...
This paper demonstrates that standard algorithms for training support vector machines generally prod...
In this paper, we propose a method to select support vectors to improve the performance of support v...
Instead of minimizing the observed training error, Support Vector Regression (SVR) attempts to minim...
New functionals for parameter (model) selection of Support Vector Machines are introduced based on t...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
A new algorithm for Support Vector regression is described. For a priori chosen 1/, it automatically...
We have recently proposed a new approach to control the number of basis functions and the accuracy i...
We propose a new class of support vector algorithms for regression and classification. In these algo...
In the present paper we describe a new algorithm for Support Vector Regression (SVR). Like the stan...
In support vector (SV) regression, a parameter /spl nu/ controls the number of support vectors and t...
Many recently proposed learning algorithms are clearly inspired by Support Vector Machines. Some of ...
A new algorithm for Support Vector regression is proposed. For a priori chosen ν, it automatically a...
In this tutorial we give an overview of the basic ideas underlying Support Vector (SV) machines for ...
The hyperparameters in support vector regression (SVR) determine the effectiveness of the support ve...
Support Vector Machines are a modern method assigned to the field of artificial intelligence. This m...
This paper demonstrates that standard algorithms for training support vector machines generally prod...
In this paper, we propose a method to select support vectors to improve the performance of support v...
Instead of minimizing the observed training error, Support Vector Regression (SVR) attempts to minim...
New functionals for parameter (model) selection of Support Vector Machines are introduced based on t...
Abstract − Instead of minimizing the observed training error, Support Vector Regression (SVR) attemp...
A new algorithm for Support Vector regression is described. For a priori chosen 1/, it automatically...
We have recently proposed a new approach to control the number of basis functions and the accuracy i...