This book focuses on Least Squares Support Vector Machines (LS-SVMs) which are reformulations to standard SVMs. LS-SVMs are closely related to regularization networks and Gaussian processes but additionally emphasize and exploit primal-dual interpretations from optimization theory. The authors explain the natural links between LS-SVM classifiers and kernel Fisher discriminant analysis. Bayesian inference of LS-SVM models is discussed, together with methods for imposing sparseness and employing robust statistics.The framework is further extended towards unsupervised learning by considering PCA analysis and its kernel version as a one-class modelling problem. This leads to new primal-dual support vector machine formulations for kernel PCA and kernel CCA analysis. Furthermore, LS-SVM formulations are given for recurrent networks and control. In general, support vector machines may pose heavy computational challenges for large data sets. For this purpose, a method of fixed size LS-SVM is proposed where the estimation is done in the primal space in relation to a Nyström sampling with active selection of support vectors. The methods are illustrated with several examples.
Joseph De Brabanter & Bart De Moor
LEAST SQUARES SUPPORT VECTOR MACHINES [PDF ebook]
LEAST SQUARES SUPPORT VECTOR MACHINES [PDF ebook]
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Lingua Inglese ● Formato PDF ● Pagine 308 ● ISBN 9789812776655 ● Dimensione 11.2 MB ● Casa editrice World Scientific Publishing Company ● Città Singapore ● Paese SG ● Pubblicato 2002 ● Scaricabile 24 mesi ● Moneta EUR ● ID 2446199 ● Protezione dalla copia Adobe DRM
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