Restricted distance-type Gaussian estimators based on density power divergence and their aplications in hypothesis testing

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Felipe Ortega, Ángel and Jaenada Malagón, María and Miranda Menéndez, Pedro and Pardo Llorente, Leandro (2023) Restricted distance-type Gaussian estimators based on density power divergence and their aplications in hypothesis testing. Mathematics, 11 (6). 1480 (41). ISSN 2227-7390

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Official URL: https://doi.org/10.3390/math11061480




Abstract

In this paper, we introduce the restricted minimum density power divergence Gaussian estimator (MDPDGE) and study its main asymptotic properties. In addition, we examine it robustness through its influence function analysis. Restricted estimators are required in many practical situations, such as testing composite null hypotheses, and we provide in this case constrained estimators to inherent restrictions of the underlying distribution. Furthermore, we derive robust Rao-type test statistics based on the MDPDGE for testing a simple null hypothesis, and we deduce explicit expressions for some main important distributions. Finally, we empirically evaluate the efficiency and robustness of the method through a simulation study


Item Type:Article
Uncontrolled Keywords:Gaussian estimator ; Minimum density power divergence Gaussian estimator ; Robustness ; Influence function ; Rao-type tests ; Elliptical family of distributions
Subjects:Sciences > Mathematics > Mathematical statistics
ID Code:76631
Deposited On:14 Feb 2023 12:38
Last Modified:13 Apr 2023 17:17

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