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The B-exponential divergence and its generalizations with applications to parametric estimation

机译:B指数散度及其推广及其在参数估计中的应用

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In this paper a new family of minimum divergence estimators based on the Bregman divergence is proposed, where the defining convex function has an exponential nature. These estimators avoid the necessity of using an intermediate kernel density and many of them also have strong robustness properties. It is further demonstrated that the proposed approach can be extended to construct a class of generalized estimating equations, where the pool of the resultant estimators encompass a large variety of minimum divergence estimators and range from highly robust to fully efficient based on the choice of the tuning parameters. All of the resultant estimators are M-estimators, where the defining functions make explicit use of the form of the parametric model. The properties of these estimators are discussed in detail; the theoretical results are substantiated by simulation and real data examples. It is observed that in many cases, certain robust estimators from the above generalized class provide better compromises between robustness and efficiency compared to the existing standards.
机译:本文提出了一个新的基于Bregman散度的最小散度估计量族,其中定义凸函数具有指数性质。这些估计器避免了使用中间核密度的必要性,并且其中许多还具有强大的鲁棒性。进一步证明,所提出的方法可以扩展为构造一类广义估计方程,其中结果估计量的集合包括各种各样的最小散度估计量,并且根据调整的选择,范围从高度鲁棒到完全有效参数。所有结果估计器都是M估计器,其中定义函数明确使用了参数模型的形式。这些估计器的属性将详细讨论。理论结果通过仿真和实际数据实例得到证实。可以看到,在许多情况下,与现有标准相比,上述广义类中的某些鲁棒估计量在鲁棒性和效率之间提供了更好的折衷方案。

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