相关向量机在回归与分类中的性能研究

Jianguo Jiang, Meimei Li, Xiang Jing, Bin Lv
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引用次数: 7

摘要

为了克服支持向量机(SVM)固有的核函数必须满足Mercer条件等缺陷,提出了相关向量机(RVM)来避免支持向量机的这些缺点。本文研究了RVM和SVM在回归和分类问题上的性能。由于RVM基于贝叶斯框架,引入了惩罚项的先验知识,因此RVM不需要相关向量(SVM中的支持向量),但比SVM具有更好的泛化能力。最后,通过仿真实验表明,无论在回归还是分类情况下,RVM都比SVM具有更少的RVs或SVs,但具有更好的泛化能力,并表明不同的核函数会影响RVM的性能。然而,并不存在一个核函数的性能比其他核函数好得多的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the performance of relevance vector machine for regression and classification
In order to overcome many inherent defects of support vector machine (SVM), for example, the kernel function must satisfy the Mercer condition, relevance vector machine (RVM) was proposed to avoid these shortcomings of SVM. This study concerns with the performance of RVM and SVM for regression and classification problem. Because RVM is based on Bayesian framework, a priori knowledge of the penalty term is introduced, the RVM needless relevance vectors (RVs) (support vectors (SVs) in SVM) but better generalization ability than SVM. In this paper, Sparse Bayesian learning (SBL) is firstly introduced and then RVM regression and classification models which based on SBL are introduced secondly, and then by inference the parameters, the RVM learning is transform into maximize the marginal likelihood function estimation, and give three kinds of commonly used estimation methods. Finally, we do some simulation experiments to show that the RVM has less RVs or SVs but better generalization ability than SVM whether regression or classification case, and also show that different kernel functions will impact the performance of RVM. However, there does not exist the performance of a kernel function is much better than other kernel functions.
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