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<html> <head> <title> Netlab Reference Manual rbf </title> </head> <body> <H1> rbf </H1> <h2> Purpose </h2> Creates an RBF network with specified architecture <p><h2> Synopsis </h2> <PRE> net = rbf(nin, nhidden, nout, rbfunc) net = rbf(nin, nhidden, nout, rbfunc, outfunc) net = rbf(nin, nhidden, nout, rbfunc, outfunc, prior, beta) </PRE> <p><h2> Description </h2> <CODE>net = rbf(nin, nhidden, nout, rbfunc)</CODE> constructs and initialises a radial basis function network returning a data structure <CODE>net</CODE>. The weights are all initialised with a zero mean, unit variance normal distribution, with the exception of the variances, which are set to one. This makes use of the Matlab function <CODE>randn</CODE> and so the seed for the random weight initialization can be set using <CODE>randn('state', s)</CODE> where <CODE>s</CODE> is the seed value. The activation functions are defined in terms of the distance between the data point and the corresponding centre. Note that the functions are computed to a convenient constant multiple: for example, the Gaussian is not normalised. (Normalisation is not needed as the function outputs are linearly combined in the next layer.) <p>The fields in <CODE>net</CODE> are <PRE> type = 'rbf' nin = number of inputs nhidden = number of hidden units nout = number of outputs nwts = total number of weights and biases actfn = string defining hidden unit activation function: 'gaussian' for a radially symmetric Gaussian function. 'tps' for r^2 log r, the thin plate spline function. 'r4logr' for r^4 log r. outfn = string defining output error function: 'linear' for linear outputs (default) and SoS error. 'neuroscale' for Sammon stress measure. c = centres wi = squared widths (null for rlogr and tps) w2 = second layer weight matrix b2 = second layer bias vector </PRE> <p><CODE>net = rbf(nin, nhidden, nout, rbfund, outfunc)</CODE> allows the user to specify the type of error function to be used. The field <CODE>outfn</CODE> is set to the value of this string. Linear outputs (for regression problems) and Neuroscale outputs (for topographic mappings) are supported. <p><CODE>net = rbf(nin, nhidden, nout, rbfunc, outfunc, prior, beta)</CODE>, in which <CODE>prior</CODE> is a scalar, allows the field <CODE>net.alpha</CODE> in the data structure <CODE>net</CODE> to be set, corresponding to a zero-mean isotropic Gaussian prior with inverse variance with value <CODE>prior</CODE>. Alternatively, <CODE>prior</CODE> can consist of a data structure with fields <CODE>alpha</CODE> and <CODE>index</CODE>, allowing individual Gaussian priors to be set over groups of weights in the network. Here <CODE>alpha</CODE> is a column vector in which each element corresponds to a separate group of weights, which need not be mutually exclusive. The membership of the groups is defined by the matrix <CODE>indx</CODE> in which the columns correspond to the elements of <CODE>alpha</CODE>. Each column has one element for each weight in the matrix, in the order defined by the function <CODE>rbfpak</CODE>, and each element is 1 or 0 according to whether the weight is a member of the corresponding group or not. A utility function <CODE>rbfprior</CODE> is provided to help in setting up the <CODE>prior</CODE> data structure. <p><CODE>net = rbf(nin, nhidden, nout, func, prior, beta)</CODE> also sets the additional field <CODE>net.beta</CODE> in the data structure <CODE>net</CODE>, where beta corresponds to the inverse noise variance. <p><h2> Example </h2> The following code constructs an RBF network with 1 input and output node and 5 hidden nodes and then propagates some data <CODE>x</CODE> through it. <PRE> net = rbf(1, 5, 1, 'tps'); [y, act] = rbffwd(net, x); </PRE> <p><h2> See Also </h2> <CODE><a href="rbferr.htm">rbferr</a></CODE>, <CODE><a href="rbffwd.htm">rbffwd</a></CODE>, <CODE><a href="rbfgrad.htm">rbfgrad</a></CODE>, <CODE><a href="rbfpak.htm">rbfpak</a></CODE>, <CODE><a href="rbftrain.htm">rbftrain</a></CODE>, <CODE><a href="rbfunpak.htm">rbfunpak</a></CODE><hr> <b>Pages:</b> <a href="index.htm">Index</a> <hr> <p>Copyright (c) Ian T Nabney (1996-9) </body> </html>