Robust linear mixed models for Small Area Estimation

Enrico Fabrizi, Carlo Trivisano

Risultato della ricerca: Contributo in rivistaArticolo in rivistapeer review

13 Citazioni (Scopus)

Abstract

Hierarchical models are popular in many applied statistics fields including Small Area Estimation. One well known model employed in this particular field is the Fay Herriot model, in which unobservable parameters are assumed to be Gaussian. In Hierarchical models assumptions about unobservable quantities are difficult to check. For a special case of the Fay Herriot model, Sinharay and Stern [2003. Posterior predictive model checking in Hierarchical models. J. Statist. Plann. Inference 111, 209 221] showed that violations of the assumptions about the random effects are difficult to detect using posterior predictive checks. In this present paper we consider two extensions of the Fay Herriot model in which the random effects are assumed to be distributed according to either an exponential power (EP) distribution or a skewed EP distribution. We aim to explore the robustness of the Fay Herriot model for the estimation of individual area means as well as the empirical distribution function of their `ensemble'. Our findings, which are based on a simulation experiment, are largely consistent with those of Sinharay and Stern as far as the efficient estimation of individual small area parameters is concerned. However, when estimating the empirical distribution function of the `ensemble' of small area parameters, results are more sensitive to the failure of distributional assumptions.
Lingua originaleEnglish
pagine (da-a)433-443
Numero di pagine11
RivistaJournal of Statistical Planning and Inference
Volume140
DOI
Stato di pubblicazionePubblicato - 2009

Keywords

  • 'Ensemble' estimators
  • Exponential power distribution
  • Fay-Herriot model
  • Skewed exponential power distribution

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