Semiparametric location mixtures with distinct components |
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Authors: | Daniel Hohmann |
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Affiliation: | Fakult?t für Mathematik und Informatik , Philipps-Universit?t Marburg , Hans-Meerwein-Str., 35032 , Marburg , Germany |
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Abstract: | We consider a two-component location mixture model with symmetric components, one of which is assumed to be known, the other is unknown. We show identifiability under assumptions on the tails of the characteristic function for the true underlying mixture, and also construct asymptotically normal estimates. The model is an extension of the contamination model in Bordes et al. [Semiparametric estimation of a two-component mixture model when a component is known, Scand. J. Statist. 33 (2006), pp. 733–752], and also related to a location mixture of one symmetric density as in Bordes et al. [Semiparametric estimation of a two component mixture model, Ann. Statist. 34 (2006), pp. 1204–1232]. We show by simulation that estimating the additional location parameter leads to a slight loss of efficiency as compared with the contamination model. |
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Keywords: | semiparametric mixture identifiability asymptotic normality finite mixture model |
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