The problem of extracting a minimal number of data points from a large dataset, in order to generate a support vector machine (SVM) classi er, is formulated as a concave minimization problem and solved by a nite number of linear programs. This minimal set of data points, which is the smallest number of support vectors that completely characterize a separating plane classi er, is considerably smaller than that required by a standard 1-norm support vector machine with or without feature selection. The proposed approach also incorporates a feature selection procedure that results in a minimal number of input features used by the classi er. Tenfold cross validation gives as good or better test results using the proposed minimal sup...
An algorithm is proposed which generates a nonlinear kernel-based separating surface that requires ...
Support Vector Machines (SVMs) perform pattern recognition between two point classes by finding a de...
This paper proposes a novel method for solving one-class classification problems. The proposed appro...
Computational comparison is made between two feature selection approaches for finding a separating p...
Computational comparison is made between two feature selection approaches for finding a separating p...
In this work we consider feature selection for two-class linear models, a challenging task arising i...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
International audienceThis work focuses on support vector machine (SVM) with feature selection. A MI...
Artículo de publicación ISIThe performance of classification methods, such as Support Vector Machine...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
Support vector machines (SVMs) are a classifier that uses optimal separating hyperplanes (Vapnik, 19...
Support Vector Machines (SVMs) have found many applications in various fields. They have been introd...
This work focuses on support vector machine (SVM)with feature selection. A MILP formulation is propo...
The high generalization ability of support vector machines (SVMs) has been shown in many practical a...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
An algorithm is proposed which generates a nonlinear kernel-based separating surface that requires ...
Support Vector Machines (SVMs) perform pattern recognition between two point classes by finding a de...
This paper proposes a novel method for solving one-class classification problems. The proposed appro...
Computational comparison is made between two feature selection approaches for finding a separating p...
Computational comparison is made between two feature selection approaches for finding a separating p...
In this work we consider feature selection for two-class linear models, a challenging task arising i...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
International audienceThis work focuses on support vector machine (SVM) with feature selection. A MI...
Artículo de publicación ISIThe performance of classification methods, such as Support Vector Machine...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
Support vector machines (SVMs) are a classifier that uses optimal separating hyperplanes (Vapnik, 19...
Support Vector Machines (SVMs) have found many applications in various fields. They have been introd...
This work focuses on support vector machine (SVM)with feature selection. A MILP formulation is propo...
The high generalization ability of support vector machines (SVMs) has been shown in many practical a...
We introduce a method of feature selection for Support Vector Machines. The method is based upon fin...
An algorithm is proposed which generates a nonlinear kernel-based separating surface that requires ...
Support Vector Machines (SVMs) perform pattern recognition between two point classes by finding a de...
This paper proposes a novel method for solving one-class classification problems. The proposed appro...