Title of article :
Efficient Hellinger distance estimates for semiparametric models
Author/Authors :
Wu، نويسنده , , Jingjing and Karunamuni، نويسنده , , Rohana J. Karunamuni، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2012
Abstract :
Minimum distance techniques have become increasingly important tools for solving statistical estimation and inference problems. In particular, the successful application of the Hellinger distance approach to fully parametric models is well known. The corresponding optimal estimators, known as minimum Hellinger distance estimators, achieve efficiency at the model density and simultaneously possess excellent robustness properties. For statistical models that are semiparametric, in that they have a potentially infinite dimensional unknown nuisance parameter, minimum distance methods have not been fully studied. In this paper, we extend the Hellinger distance approach to general semiparametric models and study minimum Hellinger distance estimators for semiparametric models. Asymptotic properties such as consistency, asymptotic normality, efficiency and adaptivity of the proposed estimators are investigated. Small sample and robustness properties of the proposed estimators are also examined using a Monte Carlo study. Two real data examples are analyzed as well.
Keywords :
Asymptotically efficient estimators , Robust estimators , Adaptive estimators , Minimum Hellinger distance estimators , semiparametric models
Journal title :
Journal of Multivariate Analysis
Journal title :
Journal of Multivariate Analysis