wolffd@0: wolffd@0:
wolffd@0:wolffd@0: demrbf1wolffd@0: wolffd@0: wolffd@0:
x
and one target variable
wolffd@0: t
with data generated by sampling x
at equal intervals and then
wolffd@0: generating target data by computing sin(2*pi*x)
and adding Gaussian
wolffd@0: noise. This data is the same as that used in demmlp1.
wolffd@0:
wolffd@0: Three different RBF networks (with different activation functions) wolffd@0: are trained in two stages. First, a Gaussian mixture model is trained using wolffd@0: the EM algorithm, and the centres of this model are used to set the centres wolffd@0: of the RBF. Second, the output weights (and biases) are determined using the wolffd@0: pseudo-inverse of the design matrix. wolffd@0: wolffd@0:
demmlp1
, rbf
, rbffwd
, gmm
, gmmem
Copyright (c) Ian T Nabney (1996-9) wolffd@0: wolffd@0: wolffd@0: wolffd@0: