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STABLE MARKED POINT PROCESSES

机译:稳定的标记点过程

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摘要

In many contexts such as queuing theory, spatial statistics, geostatislics and meteorology, data are observed at irregular spatial positions. One model of this situation involves considering the observation points as generated by a Poisson process. Under this assumption, we study the limit behavior of the partial sums of the marked point process [(tj ,X(ij))}, where X(t) is a stationary random field and the points tj are generated from an independent Poisson random measure N on R . We define the sample mean and sample variance statistics and determine their joint asymptotic behavior in a heavy-tailed setting, thus extending some finite variance results of Karr [Adv. in Appl. Probab. 18 (1986) 406-422], New results on subsampling in the context of a marked point process are also presented, with the application of forming a confidence interval for the unknown mean under an unknown degree of heavy tails.
机译:在许多情况下,例如排队论,空间统计,地统计学和气象学,都在不规则的空间位置观察到数据。这种情况的一种模型涉及考虑泊松过程产生的观测点。在此假设下,我们研究标记点过程[(tj,X(ij))}的部分和的极限行为,其中X(t)是一个平稳的随机场,而点tj是从一个独立的泊松随机产生的在R上测量N。我们定义了样本均值和方差统计量,并确定了它们在重尾环境中的联合渐近行为,从而扩展了Karr的一些有限方差结果。在Appl。 Probab。 18(1986)406-422],还提出了在标记点过程中进行二次采样的新结果,并应用了在未知程度的重尾巴下为未知平均值形成置信区间的应用。

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