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Marcinkiewicz-Zygmund and ordinary strong laws for empirical distribution functions and plug-in estimators

机译:Marcinkiewicz-Zygmund以及经验分布函数和插入估计量的普通强定律

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摘要

Both Marcinkiewicz-Zygmund strong laws of large numbers (MZ-SLLNs) and ordinary strong laws of large numbers (SLLNs) for plug-in estimators of general statistical functionals are derived. It is used that if a statistical functional is 'sufficiently regular', then an (MZ-)SLLN for the estimator of the unknown distribution function yields an (MZ-)SLLN for the corresponding plug-in estimator. It is in particular shown that many L-, V- and risk functionals are 'sufficiently regular' and that known results on the strong convergence of the empirical process of α-mixing random variables can be improved. The presented approach does not only cover some known results but also provides some new strong laws for plug-in estimators of particular statistical functionals.
机译:推导了Marcinkiewicz-Zygmund大数定律(MZ-SLLNs)和一般统计函数的插入估计量的普通大数定律(SLLNs)。使用的是,如果统计函数是“足够规则的”,则未知分布函数的估计器的(MZ-)SLLN会为相应的插件估计器产生(MZ-)SLLN。特别表明,许多L-,V-和风险函数是“足够规则的”,并且可以改善有关α混合随机变量的经验过程的强收敛性的已知结果。提出的方法不仅涵盖了一些已知的结果,而且还为特定统计功能的插件估计器提供了一些新的强律。

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