代码搜索:svc

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www.eeworm.com/read/289710/8533766

m svc.m

function [nsv, alpha, b0] = svc(X,Y,ker,C) %SVC Support Vector Classification % % Usage: [nsv alpha bias] = svc(X,Y,ker,C) % % Parameters: X - Training inputs % Y - Training t
www.eeworm.com/read/289680/8534967

m svc.m

function net = svc(arg, sv, w, bias) % SVC % % Construct a support vector classification (SVC) network object. % % Examples: % % % default constructor (linear, hardmargin SVC with no suppo
www.eeworm.com/read/389274/8536664

m svc.m

function net = svc(arg, sv, w, bias) % if nargin == 0 % this is the default constructor net.kernel = linear; net.sv = []; net.w = []; net.bias = 0;
www.eeworm.com/read/188280/8552099

m svc.m

function net = svc(arg, sv, w, bias) % SVC % % Construct a support vector classification (SVC) network object. % % Examples: % % % default constructor (linear, hardmargin SVC with no suppo
www.eeworm.com/read/289416/8552749

m svc.m

function [nsv, alpha, b0] = svc(X,Y,ker,C) %SVC Support Vector Classification % % Usage: [nsv alpha bias] = svc(X,Y,ker,C) % % Parameters: X - Training inputs % Y - Training t
www.eeworm.com/read/431675/8661774

m svc.m

%SVC Support Vector Classifier % % [W,J] = svc(A,type,par,C) % % Optimizes a support vector classifier for the dataset A by % quadratic programming. The classifier can be of one of the types % as
www.eeworm.com/read/386050/8767469

m svc.m

%SVC Support Vector Classifier % % [W,J] = SVC(A,KERNEL,C) % [W,J] = SVC(A,TYPE,PAR,C) % W = A*SVC([],KERNEL,C) % W = A*SVC([],TYPE,PAR,C) % % INPUT % A Dataset % KERNEL - Un
www.eeworm.com/read/384922/8833956

m svc.m

function [nsv, alpha, b0] = svc(X,Y,ker,C) %SVC Support Vector Classification % % Usage: [nsv alpha bias] = svc(X,Y,ker,C) % % Parameters: X - Training inputs % Y - Training t
www.eeworm.com/read/384903/8834882

m svc.m

function [nsv, alpha, b0] = svc(X,Y,ker,C) %SVC Support Vector Classification % % Usage: [nsv alpha bias] = svc(X,Y,ker,C) % % Parameters: X - Training inputs % Y - Training t
www.eeworm.com/read/284759/8900417

m svc.m

function [nsv, alpha, b0] = svc(X,Y,ker,C) %SVC Support Vector Classification % % Usage: [nsv alpha bias] = svc(X,Y,ker,C) % % Parameters: X - Training inputs % Y - Training t