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Influence function analysis of the restricted minimum divergence estimators: A general form

机译:受限最小散度估计量的影响函数分析:一般形式

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The minimum divergence estimators have proved to be useful tools in the area of robust inference. The robustness of such estimators are often measured using the classical Influence Function analysis. However, in many complex situations like that of testing a composite null hypothesis require the estimators to be restricted over some proper subspace of the parameter space. The robustness of these restricted minimum divergence estimators are very crucial in order to have overall robust inference. In this paper we provide a comprehensive description of the robustness of such restricted estimators in terms of their influence function for a general class of density based divergences along with their unrestricted versions. In particular, the robustness of some popular minimum divergence estimators are also demonstrated under certain usual restrictions through examples. Thus the paper provides a general framework for the influence function analysis of a large class of minimum divergence estimators with or without restrictions on the parameters and provides theoretical solutions for measuring the impact of the parameter restrictions on the robustness of the corresponding estimators.
机译:事实证明,最小方差估计量是鲁棒推断领域中的有用工具。通常使用经典影响函数分析来测量此类估计器的鲁棒性。但是,在许多复杂的情况下(例如测试复合零假设),要求估计量限制在参数空间的某些适当子空间上。这些约束最小散度估计量的鲁棒性对于获得总体鲁棒性推断至关重要。在本文中,我们针对此类基于一般密度的散度及其非受限版本的影响函数,提供了此类受限估计量的稳健性的全面描述。特别地,在某些通常的限制下,还通过示例证明了一些流行的最小散度估计量的鲁棒性。因此,本文为有或没有参数限制的一类最小散度估计量的影响函数分析提供了一个通用框架,并为测量参数限制对相应估计量的鲁棒性的影响提供了理论上的解决方案。

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