代码搜索:Classify

找到约 2,639 项符合「Classify」的源代码

代码结果 2,639
www.eeworm.com/read/399996/7816646

m minimum_cost.m

function test_targets = Minimum_Cost(train_patterns, train_targets, test_patterns, lambda) % Classify using the minimum error criterion via histogram estimation of the densities % Inputs: % trai
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m interactive_learning.m

function test_targets = Interactive_Learning(train_patterns, train_targets, test_patterns, params) % Classify using nearest neighbors and interactive learning % Inputs: % train_patterns - Train
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m perceptron_fm.m

function [test_targets, a] = Perceptron_FM(train_patterns, train_targets, test_patterns, params) % Classify using the Perceptron algorithm but at each iteration updating the worst-classified sample
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m perceptron.m

function [test_targets, a] = Perceptron(train_patterns, train_targets, test_patterns, alg_param) % Classify using the Perceptron algorithm (Fixed increment single-sample perceptron) % Inputs: %
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m backpropagation_cgd.m

function [test_targets, Wh, Wo, errors] = Backpropagation_CGD(train_patterns, train_targets, test_patterns, params) % Classify using a backpropagation network with a batch learning algorithm and co
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m rocchiobagging.m

function [test_targets] = RocchioBagging(train_patterns, train_targets, test_patterns, params) % Classify using the Bagging algorithm % Inputs: % train_patterns - Train patterns % train_targets
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m backpropagation_sm.m

function [test_targets, Wh, Wo, J] = Backpropagation_SM(train_patterns, train_targets, test_patterns, params) % Classify using a backpropagation network with stochastic learning algorithm with mome
www.eeworm.com/read/399996/7817126

m perceptron_vim.m

function [test_targets, a] = Perceptron_VIM(train_patterns, train_targets, test_patterns, params) % Classify using the variable incerement Perceptron with margin algorithm % Inputs: % train_pat
www.eeworm.com/read/397106/8067519

m ls.m

function [D, w] = LS(train_features, train_targets, weights, region) % Classify using the least-squares algorithm % Inputs: % features- Train features % targets - Train targets % Weights - Weighted
www.eeworm.com/read/397106/8067617

m ada_boost.m

function D = ada_boost(train_features, train_targets, params, region); % Classify using the AdaBoost algorithm % Inputs: % features - Train features % targets - Train targets % Params: % 1. Number