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SVMNR
支持向量机和BP神经网络虽然都可以用来做非线性回归,但它们所基于的理论基础不同,回归的机理也不相同。支持向量机基于结构风险最小化理论,普遍认为其泛化能力要比神经网络的强。为了验证这种观点,本文编写了支持向量机非线性回归的通用Matlab程序和基于神经网络工具箱的BP神经网络仿真模块,仿真结果证实,支持向量机做非线性回归不仅泛化能力强于BP网络,而且能避免神经网络的固有缺陷——训练结果不稳定。
(Support Vector Machine and BP neural network, even though there can be used to make non-linear regression, but they are based on the theoretical basis for the different, the mechanism of regression is not the same. Support vector machine based on structural risk minimization theory, generally considered the generalization ability of neural networks than the strong. To test this view, the paper prepared by non-linear regression support vector machine procedures and based on a common Matlab neural network toolbox of BP neural network )
- 2021-03-03 21:59:32下载
- 积分:1
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imagecipher4
Bifurcations of Nonlinear Systems
- 2009-06-06 07:31:33下载
- 积分:1
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blind_xiashan
时频分析工具箱,在信号检测中经常用到的,对大家有很好的帮助。(tools of time and frequency)
- 2010-05-18 00:54:04下载
- 积分:1
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Matlab4
Distortionless data hiding based on integer wavelet transform (Watermark Extraction)
- 2011-10-06 10:44:07下载
- 积分:1
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fdtd3D wire antenna
三维FDTD程序,计算了一细直半波振子的方向图和方向性系数,考虑了细天线的处理方法。(Three-dimensional FDTD program to calculate a fine straight half-wave dipole pattern and directivity, consider the approach of fine antenna.)
- 2012-02-14 17:31:04下载
- 积分:1
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Induction_Machine_Model
Induction Machine Model/simulink
- 2011-02-10 16:03:35下载
- 积分:1
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lyapunovindex
说明: 混沌计算程序源文件——包括计算Lyapunov指数的5种方法:C-C算法,最小数据量算法,G-P算法,关联维数法,互信息量法。(the original programs to calculate chaos in order to count the Lyapunov index out. Including 5 such methods: c-c method, minimum data method, G-P, mutual information method and correlation dimentional method.)
- 2009-08-02 00:01:52下载
- 积分:1
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Ackley
Not mine code, but very usefull!
- 2013-10-24 20:38:04下载
- 积分:1
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CLT
复合材料力学CLT层合板理论的例子用matlab详细解答(Compound material mechanics cli laminated plate theory is the matlab source code)
- 2015-03-29 13:22:27下载
- 积分:1
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hk
说明: 適應型彩色中值率波消除雜訊處理,消除效果良好(The Adapt-midean filter)
- 2010-12-02 02:02:08下载
- 积分:1