代码搜索:Classify

找到约 2,639 项符合「Classify」的源代码

代码结果 2,639
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m rda.m

function D = RDA (train_features, train_targets, lamda, region) % Classify using the Regularized descriminant analysis (Friedman shrinkage algorithm) % Inputs: % features - Train features % tar
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m ml.m

function D = ML(train_features, train_targets, AlgorithmParameters, region) % Classify using the maximum-likelyhood algorithm % Inputs: % features - Train features % targets - Train targets %
www.eeworm.com/read/316604/13520477

m local_polynomial.m

function D = Local_Polynomial(features, targets, Nlp, region) % Classify using the local polynomial fitting % Inputs: % features - Train features % targets - Train targets % Nlp - Number of t
www.eeworm.com/read/316604/13520479

m backpropagation_stochastic.m

function [D, Wh, Wo] = Backpropagation_Stochastic(train_features, train_targets, params, region) % Classify using a backpropagation network with stochastic learning algorithm % Inputs: % feature
www.eeworm.com/read/316604/13520499

m cart.m

function D = CART(train_features, train_targets, params, region) % Classify using classification and regression trees % Inputs: % features - Train features % targets - Train targets % para
www.eeworm.com/read/316604/13520521

m marginalization.m

function D = Marginalization(train_features, train_targets, missing, region) % Classify data with missing features using the marginal distribution % This file is strongly made for only two feature
www.eeworm.com/read/152629/5672771

java incrementalclassifiertrainer.java

package edu.umass.cs.mallet.base.classify; import edu.umass.cs.mallet.base.types.InstanceList; /** * Adds the notion of incremental training to a ClassifierTrainer, through the * availability of
www.eeworm.com/read/147422/5729963

m lpana1.m

% Function: perform 1st stage of the Formant Based Linear Prediction Analysis % ==> classify the voicetype function [voicetype,cofa,rsd,ntotal,nframe]=lpana1(signal,basic); %%%%%%%%%
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m parzen.m

function D = parzen(train_features, train_targets, hn, region) % Classify using the Parzen windows algorithm % Inputs: % features - Train features % targets - Train targets % hn - No
www.eeworm.com/read/359185/6352476

m ml_diag.m

function D = ML_diag(train_features, train_targets, AlgorithmParameters, region) % Classify using the maximum likelyhood algorithm with diagonal covariance matrices % Inputs: % features - Train