Support Vector Machines: A nonlinear modelling and control perspective

被引:192
作者
Suykens, JAK [1 ]
机构
[1] Katholieke Univ Leuven, ESAT SISTA, Dept Elect Engn, B-3001 Louvain, Belgium
关键词
feedforward and recurrent neural networks; kernel based methods; neural control; regularization; ridge regression; robust estimation; statistical learning theory; Support Vector Machines;
D O I
10.3166/ejc.7.311-327
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In recent years neural networks as multilayer perceptrons and radial basis function networks ham been frequently, used in a wide range of fields, including control theory, signal processing and nonlinear modelling. A promising new methodology is Support Vector Machines (SVM), which has been originally introduced by, Vapnik within the area of statistical learning theory, and structural risk minimization. SVM approaches to classification, nonlinear function and density, estimation lead to convex optimization problems, typically quadratic programming. However, due to their non-parametric nature, the present SVM methods were basically restricted to static problems. We discuss a method of least squares support vector machines (LS-SVM), which has been extended to recurrent models and use in optimal control problems. We explain how robust nonlinear estimation and sparse approximation can be done by, means of this kernel based technique. A short overview of hyperparameter tuning methods is given. SVM methods are able to learn and generalize well in large dimensional input spaces and have outperformed many existing methods on benchmark data sets. Its full potential in a dynamical systems and control context remains to be explored.
引用
收藏
页码:311 / 327
页数:17
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