文件名称:rbfSrc
- 所属分类:
- 人工智能/神经网络/遗传算法
- 资源属性:
- [Java] [源码]
- 上传时间:
- 2012-11-26
- 文件大小:
- 18kb
- 下载次数:
- 0次
- 提 供 者:
- 陈*
- 相关连接:
- 无
- 下载说明:
- 别用迅雷下载,失败请重下,重下不扣分!
介绍说明--下载内容均来自于网络,请自行研究使用
This program demonstrates some function approximation capabilities of a Radial Basis Function Network.
The user supplies a set of training points which represent some "sample" points for some arbitrary curve. Next, the user specifies the number of equally spaced gaussian centers and the variance for the network. Using the training samples, the weights multiplying each of the gaussian basis functions arecalculated using the pseudo-inverse (yielding the minimum least-squares solution). The resulting network is then used to approximate the function between the given "sample" points. -This program demonstrates some function a pproximation capabilities of a Radial Basis Fu nction Network. The user supplies a set of train ing points which represent some "sample" point s for some arbitrary curve. Next, the user specifies the number of equally spaced Response centers and the variance for the netwo rk. Using the training samples, the weights multiplying each of the Gaussian ba sis functions arecalculated using the pseudo- inverse (yielding the minimum least-squares s middleware). The resulting network is then used to approximate the function between the given "sa mple "points.
The user supplies a set of training points which represent some "sample" points for some arbitrary curve. Next, the user specifies the number of equally spaced gaussian centers and the variance for the network. Using the training samples, the weights multiplying each of the gaussian basis functions arecalculated using the pseudo-inverse (yielding the minimum least-squares solution). The resulting network is then used to approximate the function between the given "sample" points. -This program demonstrates some function a pproximation capabilities of a Radial Basis Fu nction Network. The user supplies a set of train ing points which represent some "sample" point s for some arbitrary curve. Next, the user specifies the number of equally spaced Response centers and the variance for the netwo rk. Using the training samples, the weights multiplying each of the Gaussian ba sis functions arecalculated using the pseudo- inverse (yielding the minimum least-squares s middleware). The resulting network is then used to approximate the function between the given "sa mple "points.
相关搜索: pseudo
inverse
RBF
java
sis
S-Function
arbitrary
sis
radial
basis
function
network
java
radial
basis
network
java
inverse
RBF
java
sis
S-Function
arbitrary
sis
radial
basis
function
network
java
radial
basis
network
java
(系统自动生成,下载前可以参看下载内容)
下载文件列表
rbfSrc
......\html
......\....\index.html
......\rbfSrc
......\......\html
......\......\....\index.html
......\......\src
......\......\...\DataDisp.java
......\......\...\DataPoints.java
......\......\...\GaussCenter.java
......\......\...\Network.java
......\......\...\RBFunction.java
......\src
......\...\DataDisp.java
......\...\DataPoints.java
......\...\GaussCenter.java
......\...\Network.java
......\...\RBFunction.java
......\html
......\....\index.html
......\rbfSrc
......\......\html
......\......\....\index.html
......\......\src
......\......\...\DataDisp.java
......\......\...\DataPoints.java
......\......\...\GaussCenter.java
......\......\...\Network.java
......\......\...\RBFunction.java
......\src
......\...\DataDisp.java
......\...\DataPoints.java
......\...\GaussCenter.java
......\...\Network.java
......\...\RBFunction.java