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On diagnostics in multivariate measurement error models under asymmetric heavy-tailed distributions
Authors:Camila B. Zeller  Rignaldo R. Carvalho  Victor H. Lachos
Affiliation:1. Department of Statistics, Federal University of Juiz de Fora, Juiz de Fora, Minas Gerais, CEP 36036-330, Brazil
2. Department of Statistics, Campinas State University, Campinas, S?o Paulo, CEP 13083-859, Brazil
Abstract:
In this paper, we discuss the extension of some diagnostic procedures to multivariate measurement error models with scale mixtures of skew-normal distributions (Lachos et?al., Statistics 44:541?C556, 2010c). This class provides a useful generalization of normal (and skew-normal) measurement error models since the random term distributions cover symmetric, asymmetric and heavy-tailed distributions, such as skew-t, skew-slash and skew-contaminated normal, among others. Inspired by the EM algorithm proposed by Lachos et?al. (Statistics 44:541?C556, 2010c), we develop a local influence analysis for measurement error models, following Zhu and Lee??s (J R Stat Soc B 63:111?C126, 2001) approach. This is because the observed data log-likelihood function associated with the proposed model is somewhat complex and Cook??s well-known approach can be very difficult to apply to achieve local influence measures. Some useful perturbation schemes are also discussed. In addition, a score test for assessing the homogeneity of the skewness parameter vector is presented. Finally, the methodology is exemplified through a real data set, illustrating the usefulness of the proposed methodology.
Keywords:
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