We present a kernel-based framework for pattern recognition, regression estimation, function approximation, and multiple operator inversion. Adopting a regularization-theoretic framework, the above are formulated as constrained optimization problems. Previous approaches such as ridge regression, support vector methods, and regularization networks are included as special cases. We show connections between the cost function and some properties up to now believed to apply to support vector machines only. For appropriately chosen cost functions, the optimal solution of all the problems described above can be found by solving a simple quadratic programming problem
Kernel methods refer to a family of widely used nonlinear algorithms for ma-chine learning tasks lik...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
This paper addresses the problem of choosing a kernel suitable for estimation with a Support Vector ...
We present a kernel-based framework for pattern recognition, regression estimation, function approxi...
We present a kernel-based framework for pattern recognition, regression estimation, function approxi...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In this work we deal with the problem of metalearning for kernel based methods. Among the kernel met...
Kernel methods have become very popular in machine learning research and many fields of applications...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Kernel methods have become very popular in machine learning research and many fields of applications...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Regularized kernel methods such as support vector machines (SVM) and support vector regression (SVR)...
We discuss how a large class of regularization methods, collectively known as spectral regularizatio...
Kernel methods refer to a family of widely used nonlinear algorithms for ma-chine learning tasks lik...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
This paper addresses the problem of choosing a kernel suitable for estimation with a Support Vector ...
We present a kernel-based framework for pattern recognition, regression estimation, function approxi...
We present a kernel-based framework for pattern recognition, regression estimation, function approxi...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In this work we deal with the problem of metalearning for kernel based methods. Among the kernel met...
Kernel methods have become very popular in machine learning research and many fields of applications...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Kernel methods have become very popular in machine learning research and many fields of applications...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Regularized kernel methods such as support vector machines (SVM) and support vector regression (SVR)...
We discuss how a large class of regularization methods, collectively known as spectral regularizatio...
Kernel methods refer to a family of widely used nonlinear algorithms for ma-chine learning tasks lik...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
This paper addresses the problem of choosing a kernel suitable for estimation with a Support Vector ...