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支持向量机Matlab工具箱

于 2020-09-15 发布
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下载积分: 1 下载次数: 3

代码说明:

说明:  用于MATLAB的支持向量机的工具箱,用于训练与验证(Support vector machine (SVM) for MATLAB toolbox, used for training and validation)

文件列表:

支持向量机Matlab工具箱\osu_svm3.00\cmap.mat, 1728 , 1997-08-13
支持向量机Matlab工具箱\osu_svm3.00\Contents.m, 2905 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\c_clademo.m, 1907 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\demo\c_lindemo.m, 2892 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\demo\c_poldemo.m, 3369 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\c_rbfdemo.m, 3248 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\c_svcdemo.m, 749 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\DemoData_class.mat, 144664 , 2000-06-22
支持向量机Matlab工具箱\osu_svm3.00\demo\DemoData_test.mat, 144656 , 2000-02-23
支持向量机Matlab工具箱\osu_svm3.00\demo\DemoData_train.mat, 432016 , 2000-02-23
支持向量机Matlab工具箱\osu_svm3.00\demo\one_rbfdemo.m, 3382 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\osusvmdemo.m, 612 , 2000-10-10
支持向量机Matlab工具箱\osu_svm3.00\demo\SVMClassifier.mat, 38496 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\u_clademo.m, 1910 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\u_lindemo.m, 2894 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\u_poldemo.m, 3369 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\u_rbfdemo.m, 3250 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\demo\u_svcdemo.m, 750 , 2000-10-10
支持向量机Matlab工具箱\osu_svm3.00\demos.m, 587 , 2002-01-03
支持向量机Matlab工具箱\osu_svm3.00\LinearSVC.m, 1978 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\mexSVMClass.dll, 61440 , 2002-04-12
支持向量机Matlab工具箱\osu_svm3.00\mexSVMClass.m, 5181 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\mexSVMClass.mexglx, 166002 , 2002-04-12
支持向量机Matlab工具箱\osu_svm3.00\mexSVMClass.mexhp7, 127289 , 2002-03-21
支持向量机Matlab工具箱\osu_svm3.00\mexSVMClass.mexsol, 232932 , 2002-03-21
支持向量机Matlab工具箱\osu_svm3.00\mexSVMTrain.dll, 73728 , 2002-04-12
支持向量机Matlab工具箱\osu_svm3.00\mexSVMTrain.m, 4332 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\mexSVMTrain.mexglx, 165010 , 2002-04-12
支持向量机Matlab工具箱\osu_svm3.00\mexSVMTrain.mexhp7, 127290 , 2002-03-21
支持向量机Matlab工具箱\osu_svm3.00\mexSVMTrain.mexsol, 231836 , 2002-03-21
支持向量机Matlab工具箱\osu_svm3.00\Normalize.m, 234 , 2001-12-06
支持向量机Matlab工具箱\osu_svm3.00\one_RbfSVC.m, 2557 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\PolySVC.m, 2880 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\RbfSVC.m, 2431 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\Scale.m, 504 , 2002-01-28
支持向量机Matlab工具箱\osu_svm3.00\SVMClass.m, 5967 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\SVMPlot.m, 4067 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\SVMPlot2.m, 5845 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\SVMTest.m, 7212 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\SVMTrain.m, 5415 , 2002-02-15
支持向量机Matlab工具箱\osu_svm3.00\u_LinearSVC.m, 2014 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\u_PolySVC.m, 2942 , 2002-02-25
支持向量机Matlab工具箱\osu_svm3.00\u_RbfSVC.m, 2484 , 2002-02-25
支持向量机Matlab工具箱\svm\svm\binomial.m, 371 , 1997-09-19
支持向量机Matlab工具箱\svm\svm\centrefig.m, 144 , 1998-05-01
支持向量机Matlab工具箱\svm\svm\cmap.mat, 1728 , 1997-08-13
支持向量机Matlab工具箱\svm\svm\Contents.m, 1105 , 1998-08-07
支持向量机Matlab工具箱\svm\svm\Examples\Classification\iris1v23.mat, 2696 , 1997-09-28
支持向量机Matlab工具箱\svm\svm\Examples\Classification\iris2v13.mat, 2696 , 1997-09-28
支持向量机Matlab工具箱\svm\svm\Examples\Classification\iris3v12.mat, 2696 , 1997-09-28
支持向量机Matlab工具箱\svm\svm\Examples\Classification\linsep.mat, 672 , 1997-11-06
支持向量机Matlab工具箱\svm\svm\Examples\Classification\nlinsep.mat, 712 , 1997-11-06
支持向量机Matlab工具箱\svm\svm\Examples\Regression\example.mat, 744 , 1997-11-07
支持向量机Matlab工具箱\svm\svm\Examples\Regression\sinc.mat, 1056 , 1997-08-20
支持向量机Matlab工具箱\svm\svm\Examples\Regression\titanium.mat, 1096 , 1997-09-27
支持向量机Matlab工具箱\svm\svm\newsvm.zip, 76534 , 2001-10-26
支持向量机Matlab工具箱\svm\svm\nobias.m, 457 , 1998-08-06
支持向量机Matlab工具箱\svm\svm\Optimiser\Makefile, 27 , 2001-10-11
支持向量机Matlab工具箱\svm\svm\Optimiser\pr_loqo.c, 16731 , 2001-10-11
支持向量机Matlab工具箱\svm\svm\Optimiser\pr_loqo.h, 2388 , 2001-10-11
支持向量机Matlab工具箱\svm\svm\Optimiser\qp.c, 7245 , 2001-10-11
支持向量机Matlab工具箱\svm\svm\Optimiser\qp.dll, 49152 , 2001-10-26
支持向量机Matlab工具箱\svm\svm\qp.dll, 49152 , 2001-10-26
支持向量机Matlab工具箱\svm\svm\README, 2642 , 2001-10-12
支持向量机Matlab工具箱\svm\svm\softmargin.m, 312 , 1998-04-21
支持向量机Matlab工具箱\svm\svm\svc.m, 2687 , 1998-08-21
支持向量机Matlab工具箱\svm\svm\svcerror.m, 837 , 1998-08-21
支持向量机Matlab工具箱\svm\svm\svcinfo.m, 1228 , 1998-03-10
支持向量机Matlab工具箱\svm\svm\svcoutput.m, 973 , 1998-04-21
支持向量机Matlab工具箱\svm\svm\svcplot.m, 3109 , 2001-10-12
支持向量机Matlab工具箱\svm\svm\svdatanorm.m, 1299 , 1998-06-23
支持向量机Matlab工具箱\svm\svm\svkernel.m, 2608 , 2001-10-11
支持向量机Matlab工具箱\svm\svm\svr.m, 3982 , 1998-08-21
支持向量机Matlab工具箱\svm\svm\svrerror.m, 1203 , 1998-08-21
支持向量机Matlab工具箱\svm\svm\svroutput.m, 711 , 1998-04-15
支持向量机Matlab工具箱\svm\svm\svrplot.m, 1823 , 1998-02-13
支持向量机Matlab工具箱\svm\svm\svtol.m, 401 , 1998-08-21
支持向量机Matlab工具箱\svm\svm\uiclass.m, 5386 , 1997-11-18
支持向量机Matlab工具箱\svm\svm\uiclass.mat, 12592 , 1997-11-18
支持向量机Matlab工具箱\svm\svm\uiregress.m, 5627 , 1997-09-27
支持向量机Matlab工具箱\svm\svm\uiregress.mat, 11640 , 1998-10-12
支持向量机Matlab工具箱\SVM41-54.pdf, 1027441 , 2009-08-04
支持向量机Matlab工具箱\svm\svm\Examples\Classification, 0 , 2009-08-06
支持向量机Matlab工具箱\svm\svm\Examples\Regression, 0 , 2009-08-07
支持向量机Matlab工具箱\svm\svm\Examples, 0 , 2009-08-06
支持向量机Matlab工具箱\svm\svm\Optimiser, 0 , 2009-08-06
支持向量机Matlab工具箱\osu_svm3.00\demo, 0 , 2009-08-06
支持向量机Matlab工具箱\svm\svm, 0 , 2009-08-06
支持向量机Matlab工具箱\osu_svm3.00, 0 , 2009-08-06
支持向量机Matlab工具箱\svm, 0 , 2009-08-06
支持向量机Matlab工具箱, 0 , 2009-08-13

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