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1、Thisarticlewasdownloadedby:[RenminUniversityofChina]On:05April2012,At:23:50Publisher:Taylor&FrancisInformaLtdRegisteredinEnglandandWalesRegisteredNumber:1072954Registeredoffice:MortimerHouse,37-41MortimerStreet,LondonW1T3JH,UKJournaloftheAmericanStatisticalAssociationPublicationdetails,in
2、cludinginstructionsforauthorsandsubscriptioninformation:http://www.tandfonline.com/loi/uasa20Multi-DomainSamplingWithApplicationstoStructuralInferenceofBayesianNetworksQingZhouQingZhouisAssistantProfessor,DepartmentofStatistics,UniversityofCalifornia,LosAngeles,CA90095.Thisworkwassupporte
3、dinpartbyNSFgrantDMS-0805491andNSFCAREERAwardDMS-1055286.Theauthorthankstheeditor,theassociateeditor,andthetworefereesforhelpfulcommentsandsuggestionswhichsignificantlyimprovedthemanuscript.Availableonline:24Jan2012Tocitethisarticle:QingZhou(2011):Multi-DomainSamplingWithApplicationstoStr
4、ucturalInferenceofBayesianNetworks,JournaloftheAmericanStatisticalAssociation,106:496,1317-1330Tolinktothisarticle:http://dx.doi.org/10.1198/jasa.2011.ap10346PLEASESCROLLDOWNFORARTICLEFulltermsandconditionsofuse:http://www.tandfonline.com/page/terms-and-conditionsThisarticlemaybeusedforre
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7、ingoutoftheuseofthismaterial.Supplementarymaterialsforthisarticleareavailableonline.PleaseclicktheJASAlinkathttp://pubs.amstat.org.Multi-DomainSamplingWithApplicationstoStructuralInferenceofBayesianNetworksQingZHOUWhenaposteriordistributionhasmultiplemodes,unconditi