Extremely randomized trees

Extremely randomized trees

ID:39780203

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页数:40页

时间:2019-07-11

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1、MachLearn():DOI10.1007/s10994-006-6226-1ExtremelyrandomizedtreesPierreGeurts·DamienErnst·LouisWehenkelReceived:14June2005/Revised:29October2005/Accepted:15November2005/Publishedonline:2March2006SpringerScience+BusinessMedia,Inc.2006AbstractThispaperproposesanewtree-basedensemblemethodforsupervisedc

2、lassifica-tionandregressionproblems.Itessentiallyconsistsofrandomizingstronglybothattributeandcut-pointchoicewhilesplittingatreenode.Intheextremecase,itbuildstotallyrandom-izedtreeswhosestructuresareindependentoftheoutputvaluesofthelearningsample.Thestrengthoftherandomizationcanbetunedtoproblemspeci

3、ficsbytheappropriatechoiceofaparameter.Weevaluatetherobustnessofthedefaultchoiceofthisparameter,andwealsoprovideinsightonhowtoadjustitinparticularsituations.Besidesaccuracy,themainstrengthoftheresultingalgorithmiscomputationalefficiency.Abias/varianceanalysisoftheExtra-Treesalgorithmisalsoprovidedasw

4、ellasageometricalandakernelcharacterizationofthemodelsinduced.KeywordsSupervisedlearning.Decisionandregressiontrees.Ensemblemethods.Cut-pointrandomization.Bias/variancetradeoff.Kernel-basedmodels1.IntroductionInthisarticle,weproposeanewtreeinductionalgorithmthatselectssplits,bothattributeandcut-poi

5、nt,totallyorpartiallyatrandom.Theideathatrandomizeddecisiontreescouldperformaswellasclassicalonesappearedinanexperimentalstudypublishedinthelateeighties(Mingers,1989),eveniflateritwasEditor:JohannesFurnkranz¨P.Geurts()·D.Ernst·L.WehenkelDepartmentofElectricalEngineeringandComputerScience,Universit

6、yofLiege,`Liege,Sart-Tilman,B-28,B-4000Belgium`e-mail:P.Geurts@ulg.ac.beD.Ernste-mail:Dernst@ulg.ac.beL.Wehenkele-mail:L.Wehenkel@ulg.ac.beMachLearn():showninamorecarefullydesignedexperimentthattheywereactuallysignificantlylessaccuratethannormalonesonmanydatasets(BuntineandNiblett,1992).Duringtheear

7、lynineties,thestatisticalnotionsofvarianceanditscompanion,thebias,werestudiedmoresystematicallybymachinelearningresearchers(seeforexample,DietterichandKong,1995;Breiman,1996a;Friedman,1997),andthehighvarian

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