Girosi F
Massachusetts Institute of Technology, Center for Biological and Computational Learning, Cambridge MA, US, 02139.
Neural Comput. 1998 Jul 28;10(6):1455-80. doi: 10.1162/089976698300017269.
This article shows a relationship between two different approximation techniques: the support vector machines (SVM), proposed by V. Vapnik (1995) and a sparse approximation scheme that resembles the basis pursuit denoising algorithm (Chen, 1995; Chen, Donoho, and Saunders, 1995). SVM is a technique that can be derived from the structural risk minimization principle (Vapnik, 1982) and can be used to estimate the parameters of several different approximation schemes, including radial basis functions, algebraic and trigonometric polynomials, B-splines, and some forms of multilayer perceptrons. Basis pursuit denoising is a sparse approximation technique in which a function is reconstructed by using a small number of basis functions chosen from a large set (the dictionary). We show that if the data are noiseless, the modified version of basis pursuit denoising proposed in this article is equivalent to SVM in the following sense: if applied to the same data set, the two techniques give the same solution, which is obtained by solving the same quadratic programming problem. In the appendix, we present a derivation of the SVM technique in one framework of regularization theory, rather than statistical learning theory, establishing a connection between SVM, sparse approximation, and regularization theory.
由V. 瓦普尼克(1995年)提出的支持向量机(SVM),以及一种类似于基追踪去噪算法的稀疏近似方案(陈,1995年;陈、多诺霍和桑德斯,1995年)。支持向量机是一种可从结构风险最小化原理(瓦普尼克,1982年)推导得出的技术,可用于估计多种不同近似方案的参数,包括径向基函数、代数和三角多项式、B样条以及某些形式的多层感知器。基追踪去噪是一种稀疏近似技术,其中通过使用从一个大集合(字典)中选择的少量基函数来重建一个函数。我们表明,如果数据无噪声,本文提出的基追踪去噪的修改版本在以下意义上等同于支持向量机:如果应用于相同的数据集,这两种技术会给出相同的解,该解是通过求解相同的二次规划问题获得的。在附录中,我们在正则化理论的一个框架而非统计学习理论中给出了支持向量机技术的推导,建立了支持向量机、稀疏近似和正则化理论之间的联系。