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Estimators based on ranks for arma models
Authors:Nelida E Ferretti  Diana M Kelmansky  Victor J Yohai
Institution:1. Departamento de Matematica , Facultad de Ciencias Exactas , U.N.L.P., c.c. No.172, La Plata, 1900, ArgentinaCONICET, Buenos Aires Argentina;2. Departamento de Matematica , Faculted de Ciencias Exacta U.B.A., Ciudad Universitaria , Pabellon 1, Buenos Aires, 1428, ArgentinaCONICET, Buenos Aires Argentina
Abstract:In this paper we introduce a new family of robust estimators for ARMA models. These estimators are defined by replacing the residual sample autocovariances in the least squares equations by autocovariances based on ranks. The asymptotic normality of the proposed estimators is provided. The efficiency and robustness properties of these estimators are studied. An adequate choice of the score functions gives estimators which have high efficiency under normality and robustness in the presence of outliers. The score functions can also be chosen so that the resulting estimators are asymptotically as efficient as the maximum likelihood estimators for a given distribution.
Keywords:ARMA models  estimation based on ranks  asymptotic relative efficiency
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