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prtoolsnew

于 2014-08-19 发布 文件大小:657KB
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下载积分: 1 下载次数: 4

代码说明:

  new version of prtools toolbox

文件列表:

prtools
.......\@dataset
.......\........\abs.m,22,2004-06-15
.......\........\abs.p,534,2004-06-15
.......\........\and.m,22,2004-06-15
.......\........\and.p,1458,2004-06-15
.......\........\classsizes.m,347,2004-06-15
.......\........\classsizes.p,941,2004-06-15
.......\........\conj.m,23,2004-06-15
.......\........\conj.p,491,2004-06-15
.......\........\Contents.m,11782,2004-06-15
.......\........\Contents.p,126,2004-06-15
.......\........\corrcoef.m,310,2004-06-15
.......\........\corrcoef.p,1843,2004-06-15
.......\........\ctranspose.m,99,2004-06-15
.......\........\ctranspose.p,449,2004-06-15
.......\........\cumsum.m,25,2004-06-15
.......\........\cumsum.p,717,2004-06-15
.......\........\dataset.m,4569,2004-06-15
.......\........\dataset.p,14961,2004-06-15
.......\........\det.m,78,2004-06-15
.......\........\det.p,438,2004-06-15
.......\........\disp.m,72,2004-06-15
.......\........\disp.p,547,2004-06-15
.......\........\display.m,37,2004-06-15
.......\........\display.p,3414,2004-06-15
.......\........\double.m,133,2004-06-15
.......\........\double.p,409,2004-06-15
.......\........\eig.m,42,2004-06-15
.......\........\eig.p,2442,2004-06-15
.......\........\end.m,22,2004-06-15
.......\........\end.p,1130,2004-06-15
.......\........\eq.m,21,2004-06-15
.......\........\eq.p,1469,2004-06-15
.......\........\exp.m,22,2004-06-15
.......\........\exp.p,486,2004-06-15
.......\........\find.m,39,2004-06-15
.......\........\find.p,923,2004-06-15
.......\........\findident.m,387,2004-06-15
.......\........\findident.p,2288,2004-06-15
.......\........\findlabels.m,201,2004-06-15
.......\........\findlabels.p,1733,2004-06-15
.......\........\findnlab.m,572,2004-06-15
.......\........\findnlab.p,847,2004-06-15
.......\........\ge.m,21,2004-06-15
.......\........\ge.p,1469,2004-06-15
.......\........\get.m,1083,2004-06-15
.......\........\get.p,7586,2004-06-15
.......\........\getclassi.m,519,2004-06-15
.......\........\getclassi.p,484,2004-06-15
.......\........\getcost.m,541,2004-06-15
.......\........\getcost.p,2058,2004-06-15
.......\........\getdata.m,610,2004-06-15
.......\........\getdata.p,1770,2004-06-15
.......\........\getfeatdom.m,142,2004-06-15
.......\........\getfeatdom.p,417,2004-06-15
.......\........\getfeatlab.m,488,2004-06-15
.......\........\getfeatlab.p,1197,2004-06-15
.......\........\getfeatsize.m,166,2004-06-15
.......\........\getfeatsize.p,918,2004-06-15
.......\........\getident.m,124,2004-06-15
.......\........\getident.p,1339,2004-06-15
.......\........\getimheight.m,249,2004-06-15
.......\........\getimheight.p,1030,2004-06-15
.......\........\getlabels.m,1085,2004-06-15
.......\........\getlabels.p,2796,2004-06-15
.......\........\getlablist.m,258,2004-06-15
.......\........\getlablist.p,1157,2004-06-15
.......\........\getlabtype.m,110,2004-06-15
.......\........\getlabtype.p,417,2004-06-15
.......\........\getname.m,333,2004-06-15
.......\........\getname.p,1066,2004-06-15
.......\........\getnlab.m,457,2004-06-15
.......\........\getnlab.p,506,2004-06-15
.......\........\getobjsize.m,161,2004-06-15
.......\........\getobjsize.p,909,2004-06-15
.......\........\getprior.m,821,2004-06-15
.......\........\getprior.p,1779,2004-06-15
.......\........\getsize.m,487,2004-06-15
.......\........\getsize.p,1998,2004-06-15
.......\........\gettargets.m,563,2004-06-15
.......\........\gettargets.p,1125,2004-06-15
.......\........\getuser.m,71,2004-06-15
.......\........\getuser.p,414,2004-06-15
.......\........\getversion.m,221,2004-06-15
.......\........\getversion.p,649,2004-06-15
.......\........\gt.m,21,2004-06-15
.......\........\gt.p,1469,2004-06-15
.......\........\hist.m,565,2004-06-15
.......\........\hist.p,2759,2004-06-15
.......\........\horzcat.m,75,2004-06-15
.......\........\horzcat.p,4614,2004-06-15
.......\........\inv.m,22,2004-06-15
.......\........\inv.p,438,2004-06-15
.......\........\invsig.m,41,2004-06-15
.......\........\invsig.p,621,2004-06-15
.......\........\isempty.m,26,2004-06-15
.......\........\isempty.p,446,2004-06-15
.......\........\isfinite.m,27,2004-06-15
.......\........\isfinite.p,439,2004-06-15

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