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A rate of consistency for nonparametric estimators of the distribution function based on censored dependent data

机译:基于删失依存数据的分布函数的非参数估计量的一致率

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In this work, we are concerned with nonparametric estimation of the distribution function when the data are possibly censored and satisfy the -mixing condition, also called strong mixing. Among various mixing conditions used in the literature, -mixing is reasonably weak and has many practical applications as it is fulfilled by many stochastic processes including some time series models. In practice the observed data can be complete or subject to censorship, so we deal with these different cases. More precisely, the rate of the almost complete convergence is established, under the -mixing condition, for complete, singly censored and twice censored data. To lend further support to our theoretical results, a simulation study is carried out to illustrate the good accuracy of the studied method, for relatively small sample sizes. Finally, an application to censored dependent data is provided via the analysis of Chromium concentrations collected from two stations of the Niagara River in Canada.
机译:在这项工作中,当数据可能被检查并满足-混合条件(也称为强混合)时,我们关注分布函数的非参数估计。在文献中使用的各种混合条件中,-混合是相当弱的并且具有许多实际应用,因为它通过包括一些时间序列模型在内的许多随机过程得以实现。实际上,观察到的数据可以是完整的,也可以接受审查,因此我们处理这些不同的情况。更精确地,在-mixing条件下,确定了完整,单个检查和两次检查的数据的几乎完全收敛的速率。为了进一步支持我们的理论结果,进行了仿真研究,以说明对于相对较小的样本量,所研究方法的良好准确性。最后,通过分析从加拿大尼亚加拉河两个站点收集的铬浓度,提供了一种审查依赖数据的应用程序。

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