Ciencias,UNAM

On the difference in inference and prediction between the joint and independent t-error models for seemingly unrelated regressions

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dc.contributor.author Kowalski, J
dc.contributor.author Mendoza-Blanco, JR
dc.contributor.author Tu, XM
dc.contributor.author Gleser, LJ
dc.date.accessioned 2011-01-22T10:27:39Z
dc.date.available 2011-01-22T10:27:39Z
dc.date.issued 1999
dc.identifier.issn 0361-0926
dc.identifier.uri http://hdl.handle.net/11154/2626
dc.description.abstract We consider likelihood and Bayesian inferences for seemingly unrelated (linear) regressions for the joint multivariate t-error (e.g. Zellner, 1976) and the independent t-error (e.g. Maronna, 1976) models. For likelihood inference en_US
dc.description.abstract the scale matrix and the shape parameter for the joint t-error model cannot be consistently estimated because of the lack of adequate information to identify the latter. The joint t-error model also yields the same MLEs for the regression coefficients and the scale matrix as for the independent normal error model, which are not robust against outliers. Further, linear hypotheses with respect to the regression coefficients Also give rise to the same null distributions as for the independent. normal error model, though the MLE has a non-normal limiting distribution. In contrast to the striking similarities between the joint terror and the independent normal error models, the independent t-error model yields MLEs that are robust against outliers. Since the MLE of the shape parameter reflects the tails of the data distributions, this model extends the independent normal error model for modeling data distributions with relatively thicker tails. These differences are also discussed with respect to the posterior and predictive distributions for Bayesian inference. en_US
dc.language.iso en en_US
dc.title On the difference in inference and prediction between the joint and independent t-error models for seemingly unrelated regressions en_US
dc.type Article en_US
dc.identifier.idprometeo 2649
dc.source.novolpages 28(9):2119-2140
dc.subject.wos Statistics & Probability
dc.description.index WoS: SCI, SSCI o AHCI
dc.subject.keywords Bayesian inference
dc.subject.keywords GMANOVA
dc.subject.keywords growth curves models
dc.subject.keywords maximum likelihood
dc.subject.keywords multivariate normal distribution
dc.subject.keywords Robust Inference
dc.relation.journal Communications In Statistics-theory and Methods

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