代码搜索:classifier

找到约 4,824 项符合「classifier」的源代码

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www.eeworm.com/read/314653/13562564

m bayesc.m

%BAYESC Bayes classifier % % W = BAYESC(WA,WB, ... ,P,LABLIST) % % INPUT % WA, WB, ... Trained mappings for supplying class density estimates % P Vector with class prior probabili
www.eeworm.com/read/314653/13562583

m getcost.m

%GETCOST Get classification cost matrix % % [COST,LABLIST] = GETCOST(W) % % Returns the classification cost matrix as set in the classifier W. % An empty cost matrix is interpreted as equal costs for
www.eeworm.com/read/312163/13617538

m~ train_ocr.m~

% TRAIN_OCR Training of OCR classifier based on multiclass SVM. % % Description: % The following steps are performed: % - Training set is created from data in directory ExamplesDir. % - Mult
www.eeworm.com/read/312163/13617541

m train_ocr.m

% TRAIN_OCR Training of OCR classifier based on multiclass SVM. % % Description: % The following steps are performed: % - Training set is created from data in directory ExamplesDir. % - Mult
www.eeworm.com/read/134901/5891544

m train_ocr.m

% TRAIN_OCR Training of OCR classifier based on multiclass SVM. % % Description: % The following steps are performed: % - Training set is created from data in directory ExamplesDir. % - Mult
www.eeworm.com/read/493294/6400246

m nbayesc.m

%NBAYESC Bayes Classifier for given normal densities % % W = NBAYESC(U,G) % % INPUT % U Dataset of means of classes % G Covariance matrices (optional; default: identity matrices) % % OUTP
www.eeworm.com/read/493294/6400305

m neurc.m

%NEURC Automatic neural network classifier % % W = NEURC (A,UNITS) % % INPUT % A Dataset % UNITS Array indicating number of units in each hidden layer (default: [5]) % % OUTPUT % W Tra
www.eeworm.com/read/493294/6400307

m testp.m

%TESTP Error estimation of Parzen classifier % % E = TESTP(A,H,T) % E = TESTP(A,H) % % INPUT % A input dataset % H matrix smoothing parameters (optional, def: determined via %
www.eeworm.com/read/493294/6400326

m bayesc.m

%BAYESC Bayes classifier % % W = BAYESC(WA,WB, ... ,P,LABLIST) % % INPUT % WA, WB, ... Trained mappings for supplying class density estimates % P Vector with class prior probabili
www.eeworm.com/read/493294/6400353

m getcost.m

%GETCOST Get classification cost matrix % % [COST,LABLIST] = GETCOST(W) % % Returns the classification cost matrix as set in the classifier W. % An empty cost matrix is interpreted as equal costs for