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New Support Vector Algorithms

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TLDR
A new class of support vector algorithms for regression and classification that eliminates one of the other free parameters of the algorithm: the accuracy parameter in the regression case, and the regularization constant C in the classification case.
Abstract
We propose a new class of support vector algorithms for regression and classification. In these algorithms, a parameter ν lets one effectively control the number of support vectors. While this can be useful in its own right, the parameterization has the additional benefit of enabling us to eliminate one of the other free parameters of the algorithm: the accuracy parameter epsilon in the regression case, and the regularization constant C in the classification case. We describe the algorithms, give some theoretical results concerning the meaning and the choice of ν, and report experimental results.

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Citations
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Journal ArticleDOI

Intelligent system for time series classification using support vector machines applied to supply-chain

TL;DR: This article proposes an intelligent system based on support vector machines to solve problems concerning the allocation and discovery of new models to build groups of time series that share the same forecasting model.
Posted Content

Information, Divergence and Risk for Binary Experiments

TL;DR: The authors unify f-divergences, Bregret bounds, proper scoring rules, matching losses, cost curves, ROC-curves and information, and derive a new derivation of Support Vector Machines in terms of divergences and relate Maximum Mean Discrepancy to Fisher Linear Discriminants.
Proceedings ArticleDOI

On-line one-class support vector machines. An application to signal segmentation

TL;DR: An efficient algorithm to sequentially update a density support estimate obtained using one-class support vector machines is described, which proves to be far more computationally attractive than a batch approach.
Journal ArticleDOI

Learning rates for the risk of kernel-based quantile regression estimators in additive models

TL;DR: Learning rates for regularized kernel-based methods for additive models compare favorably in particular in high dimensions to recent results on optimal learning rates for purely nonparametric regularizedkernel-based quantile regression using the Gaussian radial basis function kernel.
Journal ArticleDOI

Water eutrophication assessment relied on various machine learning techniques: A case study in the Englishmen Lake (Northern Spain)

TL;DR: A model that estimates the conditions where an abnormal growth of algae in reservoirs and lakes takes place is built, combining artificial bee colony and support vector machines algorithms to predict the eutrophication taking into account physical-chemical and biological data sampled in the Englishmen Lake and posterior analysis in a laboratory.
References
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Book

The Nature of Statistical Learning Theory

TL;DR: Setting of the learning problem consistency of learning processes bounds on the rate of convergence ofLearning processes controlling the generalization ability of learning process constructing learning algorithms what is important in learning theory?
Journal ArticleDOI

Support-Vector Networks

TL;DR: High generalization ability of support-vector networks utilizing polynomial input transformations is demonstrated and the performance of the support- vector network is compared to various classical learning algorithms that all took part in a benchmark study of Optical Character Recognition.
Book

Matrix Analysis

TL;DR: In this article, the authors present results of both classic and recent matrix analyses using canonical forms as a unifying theme, and demonstrate their importance in a variety of applications, such as linear algebra and matrix theory.
Journal ArticleDOI

A Tutorial on Support Vector Machines for Pattern Recognition

TL;DR: There are several arguments which support the observed high accuracy of SVMs, which are reviewed and numerous examples and proofs of most of the key theorems are given.
Book

Nonlinear Programming