This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in the primal SVM parameters, providing a new method for feature selection based on SVMs. This new approach includes additional constraints to the classical ones that drop the weights associated to those features that are likely to be irrelevant. A !-SVM formulation has been used, where ! indicates the fraction of features to be considered. This paper presents two versions of the proposed sparse classifier, a 2-norm SVM and a 1-norm SVM, the latter having a reduced computational burden with respect to the first one. Additionally, an explanation is provided about how the presented approach can be readily extended to multiclass classification or ...
Several decades ago, Support Vector Machines (SVMs) were introduced for performing binary classifica...
International audienceFeature selection in learning to rank has recently emerged as a crucial issue....
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
Kernel-based methods for support vector machines (SVM) have shown highly advantageous performance in...
Feature selection in learning to rank has recently emerged as a crucial issue. Whereas several prepr...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
A sparse representation of Support Vector Machines (SVMs) with respect to input features is desirabl...
In this work, we proposed a sparse version of the Support Vector Regression (SVR) algorithm that use...
AbstractIn this paper, we proposed a new algorithm, the Sparse AUC maximizing support vector machine...
The problem of extracting a minimal number of data points from a large dataset, in order to generat...
This is an electronic version of the paper presented at the 19th European Symposium on Artificial Ne...
Least Squares Support Vector Machines (LSSVM) perform classification using L2-norm on the weight vec...
<p>We propose a new binary classification and variable selection technique especially designed for h...
a b s t r a c t We introduce an embedded method that simultaneously selects relevant features during...
Several decades ago, Support Vector Machines (SVMs) were introduced for performing binary classifica...
International audienceFeature selection in learning to rank has recently emerged as a crucial issue....
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
Kernel-based methods for support vector machines (SVM) have shown highly advantageous performance in...
Feature selection in learning to rank has recently emerged as a crucial issue. Whereas several prepr...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
A sparse representation of Support Vector Machines (SVMs) with respect to input features is desirabl...
In this work, we proposed a sparse version of the Support Vector Regression (SVR) algorithm that use...
AbstractIn this paper, we proposed a new algorithm, the Sparse AUC maximizing support vector machine...
The problem of extracting a minimal number of data points from a large dataset, in order to generat...
This is an electronic version of the paper presented at the 19th European Symposium on Artificial Ne...
Least Squares Support Vector Machines (LSSVM) perform classification using L2-norm on the weight vec...
<p>We propose a new binary classification and variable selection technique especially designed for h...
a b s t r a c t We introduce an embedded method that simultaneously selects relevant features during...
Several decades ago, Support Vector Machines (SVMs) were introduced for performing binary classifica...
International audienceFeature selection in learning to rank has recently emerged as a crucial issue....
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...