Support vector machines for classification have the advantage that the curse of dimensionality is circumvented. It has been shown that a reduction of the dimension of the input space leads to even better results. For this purpose, we propose two information criteria which can be computed directly from the definition of the support vector machine. We assess the predictive performance of the models selected by our new criteria and compare them to existing variable selection techniques in a simulation study. The simulation results show that the new criteria are competitive in terms of generalization error rate while being much easier to compute. We arrive at the same findings for comparison on some real-world benchmark data sets.status: publis...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
In this chapter, we revise several methods for SVM model selection, deriving from different approach...
The amount of information in the form of features and variables avail-able to machine learning algor...
Using support vector machines for classification problems has the advantage that the curse of dimens...
Support vector machines for classification have the advantage that the curse of dimension-ality is c...
Support vector machines for classification have the advantage that the curse of dimension-ality is c...
Using support vector machines for classification problems has the advantage that the curse of dimens...
The problem of feature selection for Support Vector Machines (SVMs) classification is investigated i...
New functionals for parameter (model) selection of Support Vector Machines are introduced based on t...
In the context of support vector machines (SVM), high dimensional input vectors often reduce the com...
Abstract. A universal problem with text classification has a problem due to the high dimensionality ...
The performance of classification methods, such as Support Vector Machines, depends heavily on the p...
In recent years, Support Vector Machines (SVM) have been extensively applied to deal with various da...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
In this chapter, we revise several methods for SVM model selection, deriving from different approach...
The amount of information in the form of features and variables avail-able to machine learning algor...
Using support vector machines for classification problems has the advantage that the curse of dimens...
Support vector machines for classification have the advantage that the curse of dimension-ality is c...
Support vector machines for classification have the advantage that the curse of dimension-ality is c...
Using support vector machines for classification problems has the advantage that the curse of dimens...
The problem of feature selection for Support Vector Machines (SVMs) classification is investigated i...
New functionals for parameter (model) selection of Support Vector Machines are introduced based on t...
In the context of support vector machines (SVM), high dimensional input vectors often reduce the com...
Abstract. A universal problem with text classification has a problem due to the high dimensionality ...
The performance of classification methods, such as Support Vector Machines, depends heavily on the p...
In recent years, Support Vector Machines (SVM) have been extensively applied to deal with various da...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
The Structural Risk Minimization framework has been recently proposed as a practical method for mode...
In this chapter, we revise several methods for SVM model selection, deriving from different approach...
The amount of information in the form of features and variables avail-able to machine learning algor...