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libsvm-mat-2.89-3[FarutoUltimate3.0]

于 2020-07-07 发布
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下载积分: 1 下载次数: 2

代码说明:

说明:  可以使用SVM、LSSVM算法对样本集进行模式识别和去噪等操作(SVM and LSSVM algorithms can be used for pattern recognition and denoising)

文件列表:

libsvm-mat-2.89-3[FarutoUltimate3.0]\COPYRIGHT, 1497 , 2009-02-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\heart_scale.mat, 28904 , 2005-03-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\a_template_flow_usingSVM_class.m, 2835 , 2010-01-24
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\a_template_flow_usingSVM_regress.m, 2159 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\fasticaForSVM.m, 871 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\gaSVMcgForClass.m, 3778 , 2010-01-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\gaSVMcgForRegress.m, 3510 , 2010-01-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\gaSVMcgpForRegress.m, 3788 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\bs2rv.m, 3217 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\contents.m, 1835 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\crtbase.m, 1168 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\crtbp.m, 2187 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\crtrp.m, 2091 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\migrate.m, 7205 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\mpga.m, 4019 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\mut.m, 1609 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\mutate.m, 3437 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\mutbga.m, 4943 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\ranking.m, 4709 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\recdis.m, 1825 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\recint.m, 1895 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\reclin.m, 1953 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\recmut.m, 4852 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\recombin.m, 2438 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\reins.m, 5574 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\rep.m, 1208 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\resplot.m, 2080 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\rws.m, 1090 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\scaling.m, 1270 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\select.m, 2401 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\sus.m, 1319 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovdp.m, 1042 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovdprs.m, 1090 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovmp.m, 2795 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovsh.m, 1032 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovshrs.m, 1080 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovsp.m, 1043 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield]\xovsprs.m, 1090 , 1998-04-22
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\mapminmax.m, 5546 , 2014-01-13
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\plotroc.m, 5369 , 2008-04-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\roc.m, 4132 , 2008-04-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\pcaForSVM.m, 1316 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\psoSVMcgForClass.m, 5717 , 2010-01-24
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\psoSVMcgForRegress.m, 5397 , 2010-01-24
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\readme[by faruto].txt, 1602 , 2009-11-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\scaleForSVM.m, 1045 , 2010-01-18
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVC.m, 4189 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVC_test.m, 993 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVMcgForClass.m, 2695 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVMcgForRegress.m, 2608 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\svmplot.m, 1963 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVR.m, 5869 , 2010-01-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\SVR_test.m, 1184 , 2010-01-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\test_for_ica_SVM.m, 1126 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\TutorialForFarutoUltimate3.0.pdf, 222041 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\TutorialTest.m, 3598 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\VF.m, 3960 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\libsvm 参数说明.txt, 2600 , 2009-08-18
libsvm-mat-2.89-3[FarutoUltimate3.0]\libsvmread.c, 3823 , 2009-04-15
libsvm-mat-2.89-3[FarutoUltimate3.0]\libsvmread.mexw32, 20480 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\libsvmwrite.c, 2123 , 2009-05-01
libsvm-mat-2.89-3[FarutoUltimate3.0]\libsvmwrite.mexw32, 20480 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\LibSVM程序代码注释.pdf, 260908 , 2010-08-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\make.m, 229 , 2009-04-15
libsvm-mat-2.89-3[FarutoUltimate3.0]\Makefile, 1462 , 2009-04-15
libsvm-mat-2.89-3[FarutoUltimate3.0]\README, 9181 , 2009-04-24
libsvm-mat-2.89-3[FarutoUltimate3.0]\readme[by faruto].txt, 1602 , 2009-11-21
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm.cpp, 62422 , 2009-04-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm.h, 2968 , 2009-04-07
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm.obj, 65048 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\svmpredict.c, 9050 , 2009-04-15
libsvm-mat-2.89-3[FarutoUltimate3.0]\svmpredict.mexw32, 24576 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\svmtrain.c, 11377 , 2009-09-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\svmtrain.mexw32, 45056 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm_model_matlab.c, 7684 , 2009-04-15
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm_model_matlab.h, 201 , 2007-11-23
libsvm-mat-2.89-3[FarutoUltimate3.0]\svm_model_matlab.obj, 6294 , 2010-01-16
libsvm-mat-2.89-3[FarutoUltimate3.0]\test_data\wine_test.mat, 23120 , 2009-10-30
libsvm-mat-2.89-3[FarutoUltimate3.0]\test_data\x123.mat, 2936 , 2009-10-30
libsvm-mat-2.89-3[FarutoUltimate3.0]\TutorialForFarutoUltimate3.0.pdf, 222041 , 2010-01-17
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate\gatbx[Sheffield], 0 , 2020-07-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\myprivate, 0 , 2020-07-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto]\pcode, 0 , 2017-03-28
libsvm-mat-2.89-3[FarutoUltimate3.0]\implement[by faruto], 0 , 2020-07-06
libsvm-mat-2.89-3[FarutoUltimate3.0]\test_data, 0 , 2020-07-06
libsvm-mat-2.89-3[FarutoUltimate3.0], 0 , 2020-07-06

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