%MINC Minimum combining classifier % % W = MINC(V) % W = V*MINC % % INPUT % V Set of classifiers % % OUTPUT % W Minimum combining classifier on V % % DESCRIPTION % If V = [V1,V2,V3, ... ] is a set of classifiers trained on the % same classes and W is the minimum combiner: it selects the class % with the minimum of the outputs of the input classifiers. This % might also be used as A*[V1,V2,V3]*MINC in which A is a dataset to % be classified. Consequently, if S is a dissimilarity matrix with % class feature labels (e.g. S = A*PROXM(A,'d')) then S*MINC*LABELD % is the nearest neighbor classifier. % % If it is desired to operate on posterior probabilities then the % input classifiers should be extended like V = V*CLASSC; % % The base classifiers may be combined in a stacked way (operating % in the same feature space by V = [V1,V2,V3, ... ] or in a parallel % way (operating in different feature spaces) by V = [V1;V2;V3; ... ] % % SEE ALSO (PRTools Guide) % MAPPINGS, DATASETS, VOTEC, MAXC, MEANC, MEDIANC, PRODC, % AVERAGEC, STACKED, PARALLEL % % EXAMPLES % See PREX_COMBINING % Copyright: R.P.W. Duin, duin@ph.tn.tudelft.nl % Faculty of Applied Sciences, Delft University of Technology % P.O. Box 5046, 2600 GA Delft, The Netherlands % $Id: minc.m,v 1.2 2006/03/08 22:06:58 duin Exp $ function w = minc(p1) type = 'min'; % define the operation processed by FIXEDCC. % define the name of the combiner. % this is the general procedure for all possible calls of fixed combiners % handled by FIXEDCC name = 'Minimum combiner'; if nargin == 0 w = prmapping('fixedcc','combiner',{[],type,name}); else w = fixedcc(p1,[],type,name); end if isa(w,'prmapping') w = setname(w,name); end return