Regularized least-squares classification is one of the most promising alternatives to standard support vector machines, with the desirable property of closed-form solutions that can be obtained analytically, and efficiently. While the supervised, and mostly binary case has received tremendous attention in recent years, unsupervised multi-class settings have not yet been considered. In this work we present an efficient implementation for the unsupervised extension of the multi-class regularized least-squares classification framework, which is, to the best of the authors' knowledge, the first one in the literature addressing this task. The resulting kernel-based framework efficiently combines steepest descent strategies wi...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
This is a collection of information about regularized least squares (RLS). The facts here are not ne...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
Abstract—The regularized least-squares classification is one of the most promising alternatives to s...
In this work we present the first efficient algorithm for unsupervised training of multi-class re...
Maximum margin clustering can be regarded as the direct extension of support vector machines to unsu...
Kernel-based regularized least squares (RLS) algorithms are a promising technique for classification...
We survey a number of recent results concerning the behaviour of algorithms for learning classifiers...
In Support Vector Machines (SVMs), the solution of the classification problem is characterized by a ...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
Support vector machines (SVMs) and regularized least squares (RLS) are two recent promising techniqu...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
In this paper we discuss a computational solution to the problem of large scale multi-category learn...
Machine Learning based on the Regularized Least Squares (RLS) model requires one to solve a system o...
We develop a theoretical analysis of the generalization perfor- mances of regularized least-squares ...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
This is a collection of information about regularized least squares (RLS). The facts here are not ne...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
Abstract—The regularized least-squares classification is one of the most promising alternatives to s...
In this work we present the first efficient algorithm for unsupervised training of multi-class re...
Maximum margin clustering can be regarded as the direct extension of support vector machines to unsu...
Kernel-based regularized least squares (RLS) algorithms are a promising technique for classification...
We survey a number of recent results concerning the behaviour of algorithms for learning classifiers...
In Support Vector Machines (SVMs), the solution of the classification problem is characterized by a ...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
Support vector machines (SVMs) and regularized least squares (RLS) are two recent promising techniqu...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
In this paper we discuss a computational solution to the problem of large scale multi-category learn...
Machine Learning based on the Regularized Least Squares (RLS) model requires one to solve a system o...
We develop a theoretical analysis of the generalization perfor- mances of regularized least-squares ...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
This is a collection of information about regularized least squares (RLS). The facts here are not ne...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...