摘要
支持向量机是一种基于统计学习理论的新颖的机器学习方法,由于其出色的学习性能,该技术已成为当前国际机器学习界的研究热点,该方法已经广泛用于解决分类和回归问题.本文将结构风险函数应用于径向基函数网络学习中,同时讨论了支持向量回归模型和径向基函数网络之间的关系.仿真实例表明所给算法提高了径向基函数网络的泛化性能.
Support vector machines are a kind of novel machine learning methods, based on statistical learning theory, which have become the hotspot of machine learning because of their excellent learning performance, and the method of support vector machines has been developed for solving classification and regression problems. This paper applies the structure risk function to radial basis function (RBF) networks, and then the relationship between support vector regression model and RBF networks is discussed. Simulation experiments show that this algorithm improves generalization ability of RBF networks.
出处
《生物数学学报》
CSCD
北大核心
2006年第2期204-208,共5页
Journal of Biomathematics
基金
辽宁省教育厅科学研究计划资助(2004C068)
关键词
支持向量机
神经网络
回归
结构风险函数
Support vector machine
Neural networks
Regression
Structure risk function