A general framework of least squares support vector machine with low rank kernels, referred to as LR-LSSVM, is introduced in this paper. The special structure of low rank kernels with a controlled model size brings sparsity as well as computational efficiency to the proposed model. Meanwhile,a two-step optimization algorithm with three different criteria is proposed and various experiments are carried out using the example of the so-call robust RBF kernel to validate the model. The experiment results show that the performance of the proposed algorithm is comparable or superior to several existing kernel machines
Least squares support vector machines (LSSVMs) have been widely applied for classification and regre...
In this paper, a novel sparse least squares support vector regression algorithm, referred to as LSSV...
Support vector machines (SVM's) have been introduced in literature as a method for pattern recogniti...
© 2020 The Authors. In this paper, we propose an efficient Least Squares Support Vector Machine (LS-...
In this paper, we evaluate least squares support vector machine (LS-SVM) classifiers with RBF kernel...
In Support Vector Machines (SVMs), the solution of the classification problem is characterized by a ...
Suykens et al. [1] describes a form of kernel ridge regression known as the least-squares support ve...
© 2018 In recent years, least squares support vector machines (LSSVMs) with various kernel functions...
Suykens et al. (Neurocomputing (2002), in press) describe a weighted least-squares formulation of th...
Model selection is critical to least squares support vector machine (LSSVM). A major prob-lem of exi...
In this paper, we evaluate least squares support vector machine (LS-SVM) classifiers with RBF kernel...
Neural networks such as multilayer perceptrons and radial basis function networks have been very suc...
The Least Squares Support Vector Machine (LS-SVM) is a modified SVM with a ridge regression cost fun...
An improved iterative sparse algorithm is proposed to accelerate the execution of sparse least squar...
Abstract – Since the early 90’s, Support Vector Machines (SVM) are attracting more and more attentio...
Least squares support vector machines (LSSVMs) have been widely applied for classification and regre...
In this paper, a novel sparse least squares support vector regression algorithm, referred to as LSSV...
Support vector machines (SVM's) have been introduced in literature as a method for pattern recogniti...
© 2020 The Authors. In this paper, we propose an efficient Least Squares Support Vector Machine (LS-...
In this paper, we evaluate least squares support vector machine (LS-SVM) classifiers with RBF kernel...
In Support Vector Machines (SVMs), the solution of the classification problem is characterized by a ...
Suykens et al. [1] describes a form of kernel ridge regression known as the least-squares support ve...
© 2018 In recent years, least squares support vector machines (LSSVMs) with various kernel functions...
Suykens et al. (Neurocomputing (2002), in press) describe a weighted least-squares formulation of th...
Model selection is critical to least squares support vector machine (LSSVM). A major prob-lem of exi...
In this paper, we evaluate least squares support vector machine (LS-SVM) classifiers with RBF kernel...
Neural networks such as multilayer perceptrons and radial basis function networks have been very suc...
The Least Squares Support Vector Machine (LS-SVM) is a modified SVM with a ridge regression cost fun...
An improved iterative sparse algorithm is proposed to accelerate the execution of sparse least squar...
Abstract – Since the early 90’s, Support Vector Machines (SVM) are attracting more and more attentio...
Least squares support vector machines (LSSVMs) have been widely applied for classification and regre...
In this paper, a novel sparse least squares support vector regression algorithm, referred to as LSSV...
Support vector machines (SVM's) have been introduced in literature as a method for pattern recogniti...