代码搜索:Classify
找到约 2,639 项符合「Classify」的源代码
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www.eeworm.com/read/405069/11472314
m components_with_df.m
function [test_targets, errors] = Components_with_DF(train_patterns, train_targets, test_patterns, Ncomponents)
% Classify points using component classifiers with discriminant functions
% Inputs:
www.eeworm.com/read/157703/11670770
m perceptron_fm.m
function [D, a] = Perceptron_FM(train_features, train_targets, params, region)
% Classify using the Perceptron algorithm but at each iteration updating the worst-classified sample
% Inputs:
% fe
www.eeworm.com/read/153663/12014119
m identifyingroundobjects.m
%Identifying Round Objects
%Your goal is to classify objects based on their roundness using
%bwboundaries, a boundary tracing routine.
%Step 1: Read image
RGB = imread('pillsetc.png');
imshow(R
www.eeworm.com/read/132028/14113416
txt 数据挖掘中svm算法实现.txt
SVM
function [D, a_star] = SVM(train_features, train_targets, params, region)
% Classify using (a very simple implementation of) the support vector machine algorithm
%
% Inputs:
% features-
www.eeworm.com/read/131588/14136153
m backpropagation_batch.m
function [D, Wh, Wo] = Backpropagation_Batch(train_features, train_targets, params, region)
% Classify using a backpropagation network with a batch learning algorithm
% Inputs:
% features- Train
www.eeworm.com/read/131588/14136154
m cascade_correlation.m
function D = Cascade_Correlation(train_features, train_targets, params, region)
% Classify using a backpropagation network with the cascade-correlation algorithm
% Inputs:
% features- Train feat
www.eeworm.com/read/131588/14136155
m nearest_neighbor.m
function D = Nearest_Neighbor(train_features, train_targets, Knn, region)
% Classify using the Nearest neighbor algorithm
% Inputs:
% features - Train features
% targets - Train targets
% Knn
www.eeworm.com/read/131588/14136170
m bayesian_model_comparison.m
function D = Bayesian_Model_Comparison(train_features, train_targets, Ngaussians, region)
% Classify using the Bayesian model comparison algorithm. This function accepts as inputs
% the maximum nu
www.eeworm.com/read/131588/14136210
m interactive_learning.m
function D = Interactive_Learning(train_features, train_targets, params, region);
% Classify using nearest neighbors and interactive learning
% Inputs:
% features- Train features
% targets - Tr
www.eeworm.com/read/131588/14136215
m svm.m
function [D, a_star] = SVM(train_features, train_targets, params, region)
% Classify using (a very simple implementation of) the support vector machine algorithm
%
% Inputs:
% features- Train