Mercurial > hg > camir-aes2014
view toolboxes/FullBNT-1.0.7/netlab3.3/glm.m @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
---|---|
date | Tue, 10 Feb 2015 15:05:51 +0000 |
parents | |
children |
line wrap: on
line source
function net = glm(nin, nout, outfunc, prior, beta) %GLM Create a generalized linear model. % % Description % % NET = GLM(NIN, NOUT, FUNC) takes the number of inputs and outputs for % a generalized linear model, together with a string FUNC which % specifies the output unit activation function, and returns a data % structure NET. The weights are drawn from a zero mean, isotropic % Gaussian, with variance scaled by the fan-in of the output units. % This makes use of the Matlab function RANDN and so the seed for the % random weight initialization can be set using RANDN('STATE', S) % where S is the seed value. The optional argument ALPHA sets the % inverse variance for the weight initialization. % % The fields in NET are % type = 'glm' % nin = number of inputs % nout = number of outputs % nwts = total number of weights and biases % actfn = string describing the output unit activation function: % 'linear' % 'logistic' % 'softmax' % w1 = first-layer weight matrix % b1 = first-layer bias vector % % NET = GLM(NIN, NOUT, FUNC, PRIOR), in which PRIOR is a scalar, allows % the field NET.ALPHA in the data structure NET to be set, % corresponding to a zero-mean isotropic Gaussian prior with inverse % variance with value PRIOR. Alternatively, PRIOR can consist of a data % structure with fields ALPHA and INDEX, allowing individual Gaussian % priors to be set over groups of weights in the network. Here ALPHA 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 INDEX in which the % columns correspond to the elements of ALPHA. Each column has one % element for each weight in the matrix, in the order defined by the % function GLMPAK, and each element is 1 or 0 according to whether the % weight is a member of the corresponding group or not. % % NET = GLM(NIN, NOUT, FUNC, PRIOR, BETA) also sets the additional % field NET.BETA in the data structure NET, where beta corresponds to % the inverse noise variance. % % See also % GLMPAK, GLMUNPAK, GLMFWD, GLMERR, GLMGRAD, GLMTRAIN % % Copyright (c) Ian T Nabney (1996-2001) net.type = 'glm'; net.nin = nin; net.nout = nout; net.nwts = (nin + 1)*nout; outtfns = {'linear', 'logistic', 'softmax'}; if sum(strcmp(outfunc, outtfns)) == 0 error('Undefined activation function. Exiting.'); else net.outfn = outfunc; end if nargin > 3 if isstruct(prior) net.alpha = prior.alpha; net.index = prior.index; elseif size(prior) == [1 1] net.alpha = prior; else error('prior must be a scalar or structure'); end end net.w1 = randn(nin, nout)/sqrt(nin + 1); net.b1 = randn(1, nout)/sqrt(nin + 1); if nargin == 5 net.beta = beta; end