In this paper we examine maximum likelihood estimation procedures in multilevel models for two level nesting structures. Usually, for fixed effects and variance components estimation, level-one error terms and random effects are assumed to be normally distributed. Nevertheless, in some circumstances this assumption might not be realistic, especially as concerns random effects. Thus we assume for random effects the family of multivariate exponential power distributions (MEP); subsequently, by means of Monte Carlo simulation procedures, we study robustness of maximum likelihood estimators under normal assumption when, actually, random effects are MEP distributed.

Robustness of parameter estimation procedures in multilevel models when random effects are MEP distributed / N. Solaro, P.A. Ferrari. - In: STATISTICAL METHODS & APPLICATIONS. - ISSN 1618-2510. - 16:1(2007 Jun), pp. 51-67. [10.1007/s10260-006-0016-6]

Robustness of parameter estimation procedures in multilevel models when random effects are MEP distributed

P.A. Ferrari
Ultimo
2007

Abstract

In this paper we examine maximum likelihood estimation procedures in multilevel models for two level nesting structures. Usually, for fixed effects and variance components estimation, level-one error terms and random effects are assumed to be normally distributed. Nevertheless, in some circumstances this assumption might not be realistic, especially as concerns random effects. Thus we assume for random effects the family of multivariate exponential power distributions (MEP); subsequently, by means of Monte Carlo simulation procedures, we study robustness of maximum likelihood estimators under normal assumption when, actually, random effects are MEP distributed.
Hierarchical data; ML and REML estimation; Multivariate exponential power distribution
Settore SECS-S/01 - Statistica
giu-2007
http://www.springerlink.com/content/n63422n855815718/fulltext.pdf
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/25203
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