Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning capability of machine learning algorithms using nonlinear transformations. However, one major challenge in its basic form is that the computational complexity and the memory requirement do not scale well with respect to the training size. Kernel approximation is commonly employed to resolve this issue. Essentially, kernel approximation is equivalent to learning an approximated subspace in the high-dimensional feature vector space induced and characterized by the kernel function. With streaming data acquisition, approximated subspaces can be constructed adaptively. Explicit feature vectors are then extracted by a transformation onto the approxim...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
How to use kernel methods in practice.How to control the model complexity.Kernel approximation as a ...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used preproc...
Kernel methods have been applied successfully in many data mining tasks. Subspace kernel learning wa...
The subspace method of pattern recognition is a classification technique in which pattern classes ar...
The subspace method of pattern recognition is a classification technique in which pattern classes ar...
In kernel-based classification models, given limited computational power and storage capacity, opera...
We propose a technique for a training set approximation and its usage in kernel methods. The approac...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
How to use kernel methods in practice.How to control the model complexity.Kernel approximation as a ...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used preproc...
Kernel methods have been applied successfully in many data mining tasks. Subspace kernel learning wa...
The subspace method of pattern recognition is a classification technique in which pattern classes ar...
The subspace method of pattern recognition is a classification technique in which pattern classes ar...
In kernel-based classification models, given limited computational power and storage capacity, opera...
We propose a technique for a training set approximation and its usage in kernel methods. The approac...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...