代码搜索:patterns

找到约 8,017 项符合「patterns」的源代码

代码结果 8,017
www.eeworm.com/read/245941/12771113

m k_means.m

function [patterns, targets, label] = k_means(train_patterns, train_targets, Nmu, plot_on) %Reduce the number of data points using the k-means algorithm %Inputs: % train_patterns - Input patterns
www.eeworm.com/read/245941/12771210

m competitive_learning.m

function [patterns, targets, label, W] = Competitive_learning(train_patterns, train_targets, params, plot_on) % Perform preprocessing using a competitive learning network % Inputs: % patterns -
www.eeworm.com/read/330850/12864772

m aghc.m

function [patterns, targets] = AGHC(train_patterns, train_targets, params, plot_on) %Reduce the number of data points using the agglomerative hierarchical clustering algorithm %Inputs: % train_pa
www.eeworm.com/read/330850/12865099

m fuzzy_k_means.m

function [patterns, targets] = fuzzy_k_means(train_patterns, train_targets, Nmu, plot_on) %Reduce the number of data points using the fuzzy k-means algorithm %Inputs: % train_patterns - Input pat
www.eeworm.com/read/330850/12865109

m k_means.m

function [patterns, targets, label] = k_means(train_patterns, train_targets, Nmu, plot_on) %Reduce the number of data points using the k-means algorithm %Inputs: % train_patterns - Input patterns
www.eeworm.com/read/330850/12865190

m competitive_learning.m

function [patterns, targets, label, W] = Competitive_learning(train_patterns, train_targets, params, plot_on) % Perform preprocessing using a competitive learning network % Inputs: % patterns -
www.eeworm.com/read/317622/13500829

m aghc.m

function [patterns, targets] = AGHC(train_patterns, train_targets, params, plot_on) %Reduce the number of data points using the agglomerative hierarchical clustering algorithm %Inputs: % train_pa
www.eeworm.com/read/317622/13500939

m fuzzy_k_means.m

function [patterns, targets] = fuzzy_k_means(train_patterns, train_targets, Nmu, plot_on) %Reduce the number of data points using the fuzzy k-means algorithm %Inputs: % train_patterns - Input pat
www.eeworm.com/read/317622/13500941

m k_means.m

function [patterns, targets, label] = k_means(train_patterns, train_targets, Nmu, plot_on) %Reduce the number of data points using the k-means algorithm %Inputs: % train_patterns - Input patterns
www.eeworm.com/read/317622/13500964

m competitive_learning.m

function [patterns, targets, label, W] = Competitive_learning(train_patterns, train_targets, params, plot_on) % Perform preprocessing using a competitive learning network % Inputs: % patterns -