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基于BP与SVR的非线性回归之比较
引用本文:丁蕾,朱德权.基于BP与SVR的非线性回归之比较[J].安庆师范学院学报(自然科学版),2011,17(2):94-96.
作者姓名:丁蕾  朱德权
作者单位:安庆师范学院 物理与电气工程学院,安徽安庆,246133
基金项目:安徽省教育厅自然科学重点项目(KJ2010A232)资助
摘    要:BP神经网络和用于回归的支持向量机(SVR)在非线性回归中表现出很好的学习和预测能力。本文对这两种方法的算法思想进行分析比较,并通过仿真实例对它们的回归性能加以比较,理论和实验结果表明SVR方法在稳定性和泛化性上优于BP网络方法。

关 键 词:回归  非线性  SVR  BP  仿真

Comparison of Nonlinear Regression Based on BP and SVR
DING Lei,ZHU De-quan.Comparison of Nonlinear Regression Based on BP and SVR[J].Journal of Anqing Teachers College(Natural Science Edition),2011,17(2):94-96.
Authors:DING Lei  ZHU De-quan
Institution:DING Lei,ZHU De-quan(School of Physics and Electrical Engineering,Anqing Teachers College,Anqing 246133,China)
Abstract:Error-backpropagation artificial neural network and Support Vector Machine for regression have shown good learning and forecasting performance in nonlinear regression.The paper analyses and compares algorithm theory and the ability of regression through simulation of both methods.The results indicate that SVR-based method is better than BP network based method in stability and generality.
Keywords:regression  nonlinear  SVR  BP  simulation  
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