?? c_poldemo.m
字號(hào):
echo off
%POLDEMO demonstration for using nonlinear SVM classifier with a
% polynomial keneral.
echo on;
clc
%POLDEMO demonstration for using nonlinear SVM classifier with a
% polynomial keneral.
%##########################################################################
%
% This is a demonstration script-file for contructing and
% testing a nonlinear SVM-based classifier
% (with a polynomial kernel) using OSU SVM CLASSIFIER TOOLBOX.
% Note that the form of the polynomial kernel is
% (Gamma*<X(:,i),X(:,j)>+Coefficient)^Degree
%
%##########################################################################
pause % Strike any key to continue (Note: use Ctrl-C to abort)
clc
%##########################################################################
%
% Load the training data and examine the dimensionity of the data
%
%##########################################################################
pause % Strike any key to continue
% load the training data
clear all
load DemoData_train
pause % Strike any key to continue
% take a look at the data, and please pay attention to the dimensions
% of the input data
who
size(Labels)
size(Samples)
pause % Strike any key to continue
clc
%##########################################################################
%
% Construct a nonlinear SVM classifier (with polynomial kernel)
% using the training data
% Note that the form of the polynomial kernel is
% (Gamma*<X(:,i),X(:,j)>+Coefficient)^Degree
%
%##########################################################################
pause % Strike any key to continue
% set the value of Degree if you don't want use its default value,
% which is 3.
Degree = 5;
% By using this format, the default values of Gamma, Coefficient,
% C, Epsilon, CacheSize are used.
% That is, Gamma=1, Coefficient=1, C=1, Epsilon=0.001, and CacheSize=45MB
[AlphaY, SVs, Bias, Parameters, nSV, nLabel] = PolySVC(Samples, Labels, Degree);
% End of the SVM classifier construction
%
% The resultant SVM classifier is jointly determined by
% "AlphaY", "SVs", "Bias", "Parameters", and "Ns".
%
pause % Strike any key to continue
% Save the constructed nonlinear SVM classifier
save SVMClassifier AlphaY SVs Bias Parameters nSV nLabel;
pause % Strike any key to continue
clc
%##########################################################################
%
% Test the constructed nonlinear SVM Classifier
%
%##########################################################################
pause % Strike any key to continue
% Load the constructed nonlinear SVM classifier
clear all
load SVMClassifier
pause % Strike any key to continue
% have a look at the variables determining the SVM classifier
who
pause % Strike any key to continue
% load test data
load DemoData_test
pause % Strike any key to continue
% Test the constructed SVM classifier using the test data
% begin testing ...
[ClassRate, DecisionValue, Ns, ConfMatrix, PreLabels]= SVMTest(Samples, Labels, AlphaY, SVs, Bias,Parameters, nSV, nLabel);
% end of the testing
pause % Strike any key to continue
% The resultant confusion matrix of this 4-class classification problem is:
ConfMatrix
pause % Strike any key to continue
echo off
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