代码搜索:Multi-class

找到约 534 项符合「Multi-class」的源代码

代码结果 534
www.eeworm.com/read/245176/12813321

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/245176/12813330

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a dag-svm multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/140850/13059511

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/140850/13059649

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/140850/13059659

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a dag-svm multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/128684/5980331

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/128684/5980370

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/128684/5980373

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a dag-svm multi-class support vector classifier network using the % specified tutor to train each component two-class network. %
www.eeworm.com/read/492400/6422281

m dd_ex11.m

% DD_EX11 % % Example of the training of a multi-class classifiers, constructed from % class-wise one-class classifiers. As a comparison, also the individual % one-class classifiers are explicitly con
www.eeworm.com/read/483114/6609704

m train.m

function net = train(net, tutor, varargin) % TRAIN % % Train a max-win multi-class support vector classifier network using the % specified tutor to train each component two-class network. %