代码搜索:classification

找到约 3,679 项符合「classification」的源代码

代码结果 3,679
www.eeworm.com/read/299984/7140704

m featsellr.m

%FEATSELLR Plus-L-takeaway-R feature selection for classification % % [W,RES] = FEATSELLR(A,CRIT,K,L,R,T,FID) % % INPUT % A Dataset % CRIT String name of the criterion or untrained mapping
www.eeworm.com/read/461376/7228561

m svm_classify.m

function status = svm_classify(options, data, model, predictions) % SVM_CLASSIFY - Interface to SVM light, classification module % % STATUS = SVM_CLASSIFY(OPTIONS, DATA, MODEL, PREDICTIONS) % C
www.eeworm.com/read/460435/7250431

m gendats.m

%GENDATS Generation of a simple classification problem of 2 Gaussian classes % % A = GENDATS (N,K,D,LABTYPE) % % INPUT % N Dataset size, or 2-element array of class sizes (default: [50 50]
www.eeworm.com/read/460435/7250821

m gentrunk.m

%GENTRUNK Generation of Trunk's classification problem of 2 Gaussian classes % % A = GENTRUNK(N,K) % % INPUT % N Dataset size, or 2-element array of class sizes (default: [50 50]). % K
www.eeworm.com/read/460435/7250837

m featself.m

%FEATSELF Forward feature selection for classification % % [W,R] = FEATSELF(A,CRIT,K,T,FID) % [W,R] = FEATSELF(A,CRIT,K,N,FID) % % INPUT % A Training dataset % CRIT Name of the criterion or u
www.eeworm.com/read/460435/7251035

m fdsc.m

%FDSC Feature based Dissimilarity Space Classification (outdated) % % This routine is outdated, use KERNELC instead % % W = FDSC(A,R,FEATMAP,TYPE,P,CLASSF) % W = A*FDSC([],R,FEATMAP,TYPE,P,C
www.eeworm.com/read/460435/7251177

m featselb.m

%FEATSELB Backward feature selection for classification % % [W,R] = FEATSELB(A,CRIT,K,T,FID) % [W,R] = FEATSELB(A,CRIT,K,N,FID) % % INPUT % A Dataset % CRIT String name of the criterion o
www.eeworm.com/read/460435/7251180

m featsellr.m

%FEATSELLR Plus-L-takeaway-R feature selection for classification % % [W,RES] = FEATSELLR(A,CRIT,K,L,R,T,FID) % % INPUT % A Dataset % CRIT String name of the criterion or untrained mapping
www.eeworm.com/read/450608/7480087

m gendats.m

%GENDATS Generation of a simple classification problem of 2 Gaussian classes % % A = GENDATS (N,K,D,LABTYPE) % % INPUT % N Dataset size, or 2-element array of class sizes (default: [50 50]
www.eeworm.com/read/450608/7480412

m featself.m

%FEATSELF Forward feature selection for classification % % [W,R] = FEATSELF(A,CRIT,K,T,FID) % [W,R] = FEATSELF(A,CRIT,K,N,FID) % % INPUT % A Training dataset % CRIT Name of the criterion or u