Testing Composite Hypothesis Based on the Density Power Divergence

被引:0
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作者
A. Basu
A. Mandal
N. Martin
L. Pardo
机构
[1] Indian Statistical Institute,Interdisciplinary Statistical Research Unit
[2] Wayne State University,Department of Mathematics
[3] Complutense University of Madrid,Department of Statistics and O.R. II
[4] Complutense University of Madrid,Department of Statistics and O.R. I
关键词
Density power divergence; linear combination of chi-squares; robustness; tests of hypotheses.; Primary 62F03; Secondary 62F35;
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摘要
In any parametric inference problem, the robustness of the procedure is a real concern. A procedure which retains a high degree of efficiency under the model and simultaneously provides stable inference under data contamination is preferable in any practical situation over another procedure which achieves its efficiency at the cost of robustness or vice versa. The density power divergence family of Basu et al. (Biometrika85, 549–559 1998) provides a flexible class of divergences where the adjustment between efficiency and robustness is controlled by a single parameter β. In this paper we consider general tests of parametric hypotheses based on the density power divergence. We establish the asymptotic null distribution of the test statistic and explore its asymptotic power function. Numerical results illustrate the performance of the theory developed.
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页码:222 / 262
页数:40
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