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dc.contributor.authorVillani, Mattiasde
dc.contributor.authorKohn, Robertde
dc.contributor.authorGiordani, Paolode
dc.date.accessioned2011-06-10T09:06:00Zde
dc.date.accessioned2012-08-30T06:50:17Z
dc.date.available2012-08-30T06:50:17Z
dc.date.issued2009de
dc.identifier.urihttp://www.ssoar.info/ssoar/handle/document/25402
dc.description.abstractWe model a regression density flexibly so that at each value of the covariates the density is a mixture of normals with the means, variances and mixture probabilities of the components changing smoothly as a function of the covariates. The model extends existing models in two important ways. First, the components are allowed to be heteroscedastic regressions as the standard model with homoscedastic regressions can give a poor fit to heteroscedastic data, especially when the number of covariates is large. Furthermore, we typically need fewer components, which makes it easier to interpret the model and speeds up the computation. The second main extension is to introduce a novel variable selection prior into all the components of the model. The variable selection prior acts as a self-adjusting mechanism that prevents overfitting and makes it feasible to fit flexible high-dimensional surfaces. We use Bayesian inference and Markov Chain Monte Carlo methods to estimate the model. Simulated and real examples are used to show that the full generality of our model is required to fit a large class of densities, but also that special cases of the general model are interesting models for economic data.en
dc.languageende
dc.subject.ddcWirtschaftde
dc.subject.ddcSozialwissenschaften, Soziologiede
dc.subject.ddcSocial sciences, sociology, anthropologyen
dc.subject.ddcEconomicsen
dc.subject.otherBayesian inference; Markov Chain Monte Carlo; Mixture of experts; Nonparametric estimation; Splines; Value-at-Risk; Variable selection;
dc.titleRegression density estimation using smooth adaptive Gaussian mixturesen
dc.description.reviewbegutachtet (peer reviewed)de
dc.description.reviewpeer revieweden
dc.source.journalJournal of Econometricsde
dc.source.volume153de
dc.publisher.countryNLD
dc.source.issue2de
dc.subject.classozEconomic Statistics, Econometrics, Business Informaticsen
dc.subject.classozErhebungstechniken und Analysetechniken der Sozialwissenschaftende
dc.subject.classozWirtschaftsstatistik, Ökonometrie, Wirtschaftsinformatikde
dc.subject.classozMethods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methodsen
dc.identifier.urnurn:nbn:de:0168-ssoar-254022de
dc.date.modified2011-06-10T10:56:00Zde
dc.rights.licencePEER Licence Agreement (applicable only to documents from PEER project)de
dc.rights.licencePEER Licence Agreement (applicable only to documents from PEER project)en
ssoar.gesis.collectionSOLIS;ADISde
ssoar.contributor.institutionhttp://www.peerproject.eu/de
internal.status3de
dc.type.stockarticlede
dc.type.documentjournal articleen
dc.type.documentZeitschriftenartikelde
dc.rights.copyrightfde
dc.source.pageinfo155-173
internal.identifier.classoz10905
internal.identifier.classoz10105
internal.identifier.journal195de
internal.identifier.document32
internal.identifier.ddc300
internal.identifier.ddc330
dc.identifier.doihttps://doi.org/10.1016/j.jeconom.2009.05.004de
dc.description.pubstatusPostprinten
dc.description.pubstatusPostprintde
internal.identifier.licence7
internal.identifier.pubstatus2
internal.identifier.review1
internal.check.abstractlanguageharmonizerCERTAIN
internal.check.languageharmonizerCERTAIN_RETAINED


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