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lapsvmp_v02

于 2018-01-16 发布 文件大小:160KB
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下载积分: 1 下载次数: 13

代码说明:

  lapsvm 方法,进行半监督学习,模式识别与数据挖掘,数据分类(lapsvm method,semi-supervised learning,label unlabel)

文件列表:

lapsvmp_v02, 0 , 2017-03-01
lapsvmp_v02\.DS_Store, 8196 , 2017-03-01
__MACOSX, 0 , 2017-03-01
__MACOSX\lapsvmp_v02, 0 , 2017-03-01
__MACOSX\lapsvmp_v02\._.DS_Store, 120 , 2017-03-01
lapsvmp_v02\classifiers, 0 , 2012-11-21
lapsvmp_v02\classifiers\calckernel.m, 1737 , 2009-08-17
__MACOSX\lapsvmp_v02\classifiers, 0 , 2017-03-01
__MACOSX\lapsvmp_v02\classifiers\._calckernel.m, 226 , 2009-08-17
lapsvmp_v02\classifiers\laprlsc.m, 484 , 2009-08-17
__MACOSX\lapsvmp_v02\classifiers\._laprlsc.m, 226 , 2009-08-17
lapsvmp_v02\classifiers\lapsvm.m, 2150 , 2009-08-17
__MACOSX\lapsvmp_v02\classifiers\._lapsvm.m, 226 , 2009-08-17
lapsvmp_v02\classifiers\lapsvmp.m, 24102 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._lapsvmp.m, 226 , 2012-11-21
lapsvmp_v02\classifiers\oclapsvmp.m, 694 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._oclapsvmp.m, 226 , 2012-11-21
lapsvmp_v02\classifiers\ocsvmp.m, 689 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._ocsvmp.m, 226 , 2012-11-21
lapsvmp_v02\classifiers\rlsc.m, 664 , 2009-08-17
__MACOSX\lapsvmp_v02\classifiers\._rlsc.m, 226 , 2009-08-17
lapsvmp_v02\classifiers\saveclassifier.m, 2149 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._saveclassifier.m, 226 , 2012-11-21
lapsvmp_v02\classifiers\svm.m, 1663 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._svm.m, 226 , 2012-11-21
lapsvmp_v02\classifiers\svmp.m, 591 , 2012-11-21
__MACOSX\lapsvmp_v02\classifiers\._svmp.m, 226 , 2012-11-21
__MACOSX\lapsvmp_v02\._classifiers, 226 , 2012-11-21
lapsvmp_v02\example.m, 1672 , 2012-11-22
__MACOSX\lapsvmp_v02\._example.m, 226 , 2012-11-22
lapsvmp_v02\graph, 0 , 2012-11-19
lapsvmp_v02\graph\adjacency.m, 2346 , 2012-11-14
__MACOSX\lapsvmp_v02\graph, 0 , 2017-03-01
__MACOSX\lapsvmp_v02\graph\._adjacency.m, 226 , 2012-11-14
lapsvmp_v02\graph\cosine.m, 745 , 2009-08-17
__MACOSX\lapsvmp_v02\graph\._cosine.m, 226 , 2009-08-17
lapsvmp_v02\graph\euclidean.m, 704 , 2009-08-17
__MACOSX\lapsvmp_v02\graph\._euclidean.m, 226 , 2009-08-17
lapsvmp_v02\graph\laplacian.m, 1623 , 2012-11-08
__MACOSX\lapsvmp_v02\graph\._laplacian.m, 226 , 2012-11-08
__MACOSX\lapsvmp_v02\._graph, 226 , 2012-11-19
lapsvmp_v02\gui, 0 , 2012-11-21
lapsvmp_v02\gui\2circles.mat, 5077 , 2009-05-28
__MACOSX\lapsvmp_v02\gui, 0 , 2017-03-01
__MACOSX\lapsvmp_v02\gui\._2circles.mat, 226 , 2009-05-28
lapsvmp_v02\gui\2moons.mat, 7552 , 2004-06-12
__MACOSX\lapsvmp_v02\gui\._2moons.mat, 226 , 2004-06-12
lapsvmp_v02\gui\2spirals.mat, 1959 , 2009-05-29
__MACOSX\lapsvmp_v02\gui\._2spirals.mat, 226 , 2009-05-29
lapsvmp_v02\gui\clock.mat, 2135 , 2009-07-07
__MACOSX\lapsvmp_v02\gui\._clock.mat, 226 , 2009-07-07
lapsvmp_v02\gui\demo.fig, 63808 , 2017-03-01
__MACOSX\lapsvmp_v02\gui\._demo.fig, 226 , 2017-03-01
lapsvmp_v02\gui\demo.m, 31818 , 2012-11-21
__MACOSX\lapsvmp_v02\gui\._demo.m, 226 , 2012-11-21
lapsvmp_v02\gui\plot2D.m, 802 , 2012-11-07
__MACOSX\lapsvmp_v02\gui\._plot2D.m, 226 , 2012-11-07
lapsvmp_v02\gui\plotclassifier.m, 1323 , 2012-11-21
__MACOSX\lapsvmp_v02\gui\._plotclassifier.m, 226 , 2012-11-21
__MACOSX\lapsvmp_v02\._gui, 226 , 2012-11-21
lapsvmp_v02\libsvm, 0 , 2012-11-06
lapsvmp_v02\libsvm\make_libsvm.m, 335 , 2009-08-17
__MACOSX\lapsvmp_v02\libsvm, 0 , 2017-03-01
__MACOSX\lapsvmp_v02\libsvm\._make_libsvm.m, 226 , 2009-08-17
lapsvmp_v02\libsvm\mexGramSVMTrain.cpp, 3898 , 2009-05-30
__MACOSX\lapsvmp_v02\libsvm\._mexGramSVMTrain.cpp, 226 , 2009-05-30
lapsvmp_v02\libsvm\mexGramSVMTrain.mexw64, 53760 , 2009-05-30
__MACOSX\lapsvmp_v02\libsvm\._mexGramSVMTrain.mexw64, 226 , 2009-05-30
lapsvmp_v02\libsvm\svm.cpp, 62503 , 2009-06-22
__MACOSX\lapsvmp_v02\libsvm\._svm.cpp, 226 , 2009-06-22
lapsvmp_v02\libsvm\svm.h, 2968 , 2009-04-08
__MACOSX\lapsvmp_v02\libsvm\._svm.h, 226 , 2009-04-08
__MACOSX\lapsvmp_v02\._libsvm, 226 , 2012-11-06
lapsvmp_v02\make_options.m, 4452 , 2012-11-14
__MACOSX\lapsvmp_v02\._make_options.m, 226 , 2012-11-14
lapsvmp_v02\setpaths.m, 77 , 2009-03-31
__MACOSX\lapsvmp_v02\._setpaths.m, 226 , 2009-03-31
__MACOSX\._lapsvmp_v02, 226 , 2017-03-01

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