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1 <html> | |
2 <head> | |
3 <title> | |
4 Netlab Reference Manual demrbf1 | |
5 </title> | |
6 </head> | |
7 <body> | |
8 <H1> demrbf1 | |
9 </H1> | |
10 <h2> | |
11 Purpose | |
12 </h2> | |
13 Demonstrate simple regression using a radial basis function network. | |
14 | |
15 <p><h2> | |
16 Synopsis | |
17 </h2> | |
18 <PRE> | |
19 demrbf1</PRE> | |
20 | |
21 | |
22 <p><h2> | |
23 Description | |
24 </h2> | |
25 The problem consists of one input variable <CODE>x</CODE> and one target variable | |
26 <CODE>t</CODE> with data generated by sampling <CODE>x</CODE> at equal intervals and then | |
27 generating target data by computing <CODE>sin(2*pi*x)</CODE> and adding Gaussian | |
28 noise. This data is the same as that used in demmlp1. | |
29 | |
30 <p>Three different RBF networks (with different activation functions) | |
31 are trained in two stages. First, a Gaussian mixture model is trained using | |
32 the EM algorithm, and the centres of this model are used to set the centres | |
33 of the RBF. Second, the output weights (and biases) are determined using the | |
34 pseudo-inverse of the design matrix. | |
35 | |
36 <p><h2> | |
37 See Also | |
38 </h2> | |
39 <CODE><a href="demmlp1.htm">demmlp1</a></CODE>, <CODE><a href="rbf.htm">rbf</a></CODE>, <CODE><a href="rbffwd.htm">rbffwd</a></CODE>, <CODE><a href="gmm.htm">gmm</a></CODE>, <CODE><a href="gmmem.htm">gmmem</a></CODE><hr> | |
40 <b>Pages:</b> | |
41 <a href="index.htm">Index</a> | |
42 <hr> | |
43 <p>Copyright (c) Ian T Nabney (1996-9) | |
44 | |
45 | |
46 </body> | |
47 </html> |