%TRAINED_MAPPING Define trained mapping % % W = TRAINED_MAPPING(A,DATA,DIM) % % INPUT % A - Dataset used for training % DATA - Data (cell araay or structure) to be stored in the data-field % of the mapping in order to transfer it to the execution part % DIM - Dimensionality of output space. % % OUTPUT % W - Mapping % % DESCRIPTION % This is a simplified version of the definition of a trained mapping. It % calls PRMAPPING and derives all needed information from the dataset A used % for training the mapping. In DATA everything should be stored needed for % the execution of the mapping, either in a structure or by a cell array. % % SEE ALSO (PRTools Guide) % MAPPINGS, PRMAPPING, TRAINED_CLASSIFIER, DEFINE_MAPPING, MAPPING_TASK % Copyright: Robert P.W. Duin, prtools@rduin.nl function w = trained_mapping(varargin) [a,data,out_size] = setdefaults(varargin,[],[],0); fname = callername; mapname = getname(feval(fname)); if isdataset(a) if out_size == 0, out_size = getsize(a,3); end w = prmapping(fname,'trained',data,getlablist(a),size(a,2),out_size); else if out_size == 0, out_size = 1; end w = prmapping(fname,'trained',data,[],size(a,2),out_size); end w = setname(w,mapname); return %CALLERNAME % % NAME = CALLERNAME % % Returns the name the calling function function name = callername [ss ,i] = dbstack; if length(ss) < 3 name = []; else name = ss(3).name; end