We revisit the classical technique of regularised least squares (RLS) for nonlinear classification in this paper. Specifically, we focus on a low-rank formulation of the RLS, which has linear time complexity in the size of data set only, independent of both the number of classes and number of features. This makes low-rank RLS particularly suitable for problems with large data and moderate feature dimensions. Moreover, we have proposed a general theorem for obtaining the closed-form estimation of prediction values on a holdout validation set given the low-rank RLS classifier trained on the whole training data. It is thus possible to obtain an error estimate for each parameter setting without retraining and greatly accelerate the process of c...
Machine Learning based on the Regularized Least Squares (RLS) model requires one to solve a system o...
RLScore is a Python open source module for kernel based machine learning. The library provides imple...
We propose an efficient algorithm for calculating hold-out and cross-validation (CV) type of estimat...
We revisit the classical technique of regularised least squares (RLS) for nonlinear classification i...
In this paper, we revisited the classical technique of Regularized Least Squares (RLS) for the class...
We propose a novel algorithm for greedy forward fea-ture selection for regularized least-squares (RL...
Kernel-based regularized least squares (RLS) algorithms are a promising technique for classification...
Support vector machines (SVMs) and regularized least squares (RLS) are two recent promising techniqu...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
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 ...
International audienceWe propose and analyse a reduced-rank method for solving least-squares regress...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
Abstract—The regularized least-squares classification is one of the most promising alternatives to s...
Machine Learning based on the Regularized Least Squares (RLS) model requires one to solve a system o...
RLScore is a Python open source module for kernel based machine learning. The library provides imple...
We propose an efficient algorithm for calculating hold-out and cross-validation (CV) type of estimat...
We revisit the classical technique of regularised least squares (RLS) for nonlinear classification i...
In this paper, we revisited the classical technique of Regularized Least Squares (RLS) for the class...
We propose a novel algorithm for greedy forward fea-ture selection for regularized least-squares (RL...
Kernel-based regularized least squares (RLS) algorithms are a promising technique for classification...
Support vector machines (SVMs) and regularized least squares (RLS) are two recent promising techniqu...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
Over the past decades, regularization theory is widely applied in various areas of machine learning ...
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 ...
International audienceWe propose and analyse a reduced-rank method for solving least-squares regress...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
Abstract—The regularized least-squares classification is one of the most promising alternatives to s...
Machine Learning based on the Regularized Least Squares (RLS) model requires one to solve a system o...
RLScore is a Python open source module for kernel based machine learning. The library provides imple...
We propose an efficient algorithm for calculating hold-out and cross-validation (CV) type of estimat...