A dimension reduction technique for estimation in linear mixed models

dc.contributor.authorCarvalho, Miguel
dc.contributor.authorFonseca, Miguel
dc.contributor.authorOliveira, Manuela
dc.contributor.authorMexia, João
dc.contributor.editorKrutchkoff, Richard G.
dc.contributor.editorAhmed, Ejaz S.
dc.contributor.editorAhn, Sung K.
dc.contributor.editorBretz, Frank
dc.contributor.editorChen, Din
dc.contributor.editorChenouri, Shojaeddin
dc.contributor.editorCheng, Guang
dc.contributor.editorDasgupta, Nairanjana
dc.contributor.editorFonnesbeck, Christopher J.
dc.contributor.editorHabing, Brian
dc.contributor.editorHwang, Sun Young
dc.contributor.editorJiang, Wei
dc.contributor.editorJona-Lassinio, Giovanna
dc.contributor.editorKulasekera, K. B.
dc.contributor.editorLawrence, Kenneth D.
dc.contributor.editorLio, Y. L.
dc.contributor.editorMartin, Michael A.
dc.contributor.editorMcKean, Joseph W.
dc.contributor.editorMolchanov, Ilya
dc.contributor.editorNeuhäuser, Markus
dc.contributor.editorNg, Angus S.K.
dc.contributor.editorNi, Liqiang
dc.contributor.editorOnar, Arzu
dc.contributor.editorOwen, William J.
dc.contributor.editorPaul, Rajib
dc.contributor.editorPeiris, Shelton
dc.contributor.editorShu, Linjie
dc.contributor.editorThomas, Fridtjof
dc.contributor.editorVolodin, Andrei
dc.contributor.editorXiang, Liming
dc.contributor.editorXu, Xinyi
dc.contributor.editorYe, Keying
dc.contributor.editorZhang, Ying
dc.contributor.editorShanmugam, Ram
dc.contributor.editorBowman, K. O.
dc.contributor.editorJohnson, Mark E.
dc.contributor.editorMartz, Harry F.
dc.contributor.editorScott, E. Marian
dc.date.accessioned2012-01-31T02:31:23Z
dc.date.available2012-01-31T02:31:23Z
dc.date.issued2011-09-12
dc.description.abstractThis paper proposes a dimension reduction technique for estimation in linear mixed models. Specifically,we show that in a linear mixed model, the maximum-likelihood (ML) problem can be rewritten as a substantially simpler optimization problem which presents at least two main advantages: the number of variables in the simplified problem is lower and the search domain of the simplified problem is a compact set. Whereas the former advantage reduces the computational burden, the latter permits the use of stochastic optimization methods well qualified for closed bounded domains. The developed dimension reduction technique makes the computation of ML estimates, for fixed effects and variance components, feasible with large computational savings. Computational experience is reported here with the results evidencingan overall good performance of the proposed technique.por
dc.identifier.authoremailmiguel.carvalho@epfl.ch
dc.identifier.authoremailfonsecamig@yahoo.com
dc.identifier.authoremailmmo@uevora.pt
dc.identifier.authoremailjtm@fct.unl.pt
dc.identifier.doi10.1080/00949655.2011.604032
dc.identifier.scientificarea336por
dc.identifier.urihttp://hdl.handle.net/10174/4702
dc.language.isoengpor
dc.peerreviewedyespor
dc.publisherJournal of Statistical Computation and Simulation. Taylor & Francispor
dc.rightsrestrictedAccesspor
dc.subjectmaximum-likelihood estimation; linear mixed models; stochastic optimizationpor
dc.titleA dimension reduction technique for estimation in linear mixed modelspor
dc.typearticlepor
degois.publication.firstPage1por
degois.publication.lastPage8por
degois.publication.titleJournal of Statistical Computation and Simulationpor

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