%BPXNC Back-propagation trained feed-forward neural net classifier % % [W,HIST] = BPXNC (A,UNITS,ITER,W_INI,T,FID) % % INPUT % A Dataset % UNITS Array indicating number of units in each hidden layer (default: [5]) % ITER Number of iterations to train (default: inf) % W_INI Weight initialisation network mapping (default: [], meaning % initialisation by Matlab's neural network toolbox) % T Tuning set (default: [], meaning use A) % FID File descriptor to report progress to (default: 0, no report) % % OUTPUT % W Trained feed-forward neural network mapping % HIST Progress report (see below) % % DESCRIPTION % A feed-forward neural network classifier with length(N) hidden layers with % N(I) units in layer I is computed for the dataset A. Training is stopped % after ITER epochs (at least 50) or if the iteration number exceeds twice % that of the best classification result. This is measured by the labeled % tuning set T. If no tuning set is supplied A is used. W_INI is used, if % given, as network initialisation. Use [] if the standard Matlab % initialisation is desired. Progress is reported in file FID (default 0). % % The entire training sequence is returned in HIST (number of epochs, % classification error on A, classification error on T, MSE on A, MSE on T). % % Uses the Mathwork's Neural Network toolbox. % % SEE ALSO (PRTools Guide) % MAPPINGS, DATASETS, LMNC, NEURC, RNNC, RBNC % Copyright: R.P.W. Duin, duin@ph.tn.tudelft.nl % Faculty of Applied Physics, Delft University of Technology % P.O. Box 5046, 2600 GA Delft, The Netherlands % $Id: bpxnc.m,v 1.2 2006/03/08 22:06:58 duin Exp $ function [w,hist] = bpxnc(varargin) [w,hist] = ffnc(mfilename,varargin{:}); return