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/299459/7849883

pl references.pl

{ "Anderson62" =>"T.W.Anderson and R.R.Bahadur. Classification into two multivariate normal distributions with differrentia covariance matrices. Anals of Mathematical Statistics, 33:420--431, Ju
www.eeworm.com/read/299459/7849915

m contents.m

% Data sets used by the STPRtool. % % andersons_task - (dir) Input for demo on Generalized Anderson's task. % binary_separable - (dir) Input for demo on Linear classification. % gmm_sample - (
www.eeworm.com/read/398324/7994152

m fwd.m

function y = fwd(net,x) % FWD % % Compute the output of a multi-class support vector classification network. % % y = fwd(net, x); % % where x is a matrix of input patterns, where each colu
www.eeworm.com/read/398324/7994276

m fwd.m

function y = fwd(net,x) % FWD % % Compute the output of a multi-class support vector classification network. % % y = fwd(net, x); % % where x is a matrix of input patterns, where each colu
www.eeworm.com/read/398324/7994452

m fwd.m

function y = fwd(net,x) % FWD % % Compute the output of a multi-class support vector classification network. % % y = fwd(net, x); % % where x is a matrix of input patterns, where each colu
www.eeworm.com/read/398324/7994459

m fwd.m

function y = fwd(net, x) % FWD % % Compute the output of a dag-svm multi-class support vector classification % network. % % y = fwd(net, x); % % where x is a matrix of input patterns, in
www.eeworm.com/read/398324/7994613

m fwd.m

function y = fwd(net,x) % FWD % % Compute the output of a multi-class support vector classification network. % % y = fwd(net, x); % % where x is a matrix of input patterns, where each colu
www.eeworm.com/read/398324/7994624

m fwd.m

function y = fwd(net, x) % FWD % % Compute the output of a dag-svm multi-class support vector classification % network. % % y = fwd(net, x); % % where x is a matrix of input patterns, in
www.eeworm.com/read/397122/8065822

m trainlssvm.m

function [model,b,X,Y] = trainlssvm(model,X,Y) % Train the support values and the bias term of an LS-SVM for classification or function approximation % % >> [alpha, b] = trainlssvm({X,Y,type,gam,ke
www.eeworm.com/read/245176/12813192

m fwd.m

function y = fwd(net,x) % FWD % % Compute the output of a multi-class support vector classification network. % % y = fwd(net, x); % % where x is a matrix of input patterns, where each colu