We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed functional form of the kernel, model selection amounts to tuning kernel parameters and the slack penalty coefficient C. We begin by reviewing a recently developed probabilistic framework for SVM classification. An extension to the case of SVMs with quadratic slack penalties is given and a simple approximation for the evidence is derived, which can be used as a criterion for model selection. We also derive the exact gradients of the evidence in terms of posterior averages and describe how they can be estimated numerically using Hybrid Monte-Carlo techniques. Though computationally demanding, the resulting gradient ascent algorithm is a useful...
When learning a support vector machine (SVM) from a set of labeled development patterns, the ultimat...
34 p.International audienceFor a support vector machine, model selection consists in selecting the k...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
Abstract—Adapting the hyperparameters of support vector machines (SVMs) is a challenging model selec...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Kernel learning methods, whether Bayesian or frequentist, typically involve multiple levels of infer...
When learning a support vector machine (SVM) from a set of labeled development patterns, the ultimat...
34 p.International audienceFor a support vector machine, model selection consists in selecting the k...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
We address the problem of model selection for Support Vector Machine (SVM) classification. For fixed...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
A common belief is that Machine Learning Theory (MLT) is not very useful, in pratice, for performing...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
This approach aims to optimize the kernel parameters and to efficiently reduce the number of support...
Abstract—Adapting the hyperparameters of support vector machines (SVMs) is a challenging model selec...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...
Kernel learning methods, whether Bayesian or frequentist, typically involve multiple levels of infer...
When learning a support vector machine (SVM) from a set of labeled development patterns, the ultimat...
34 p.International audienceFor a support vector machine, model selection consists in selecting the k...
Tuning the regularisation and kernel hyperparameters is a vital step in optimising the generalisatio...