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Multivariate generalized linear-statistics of short range dependent data

机译:短程相关数据的多元广义线性统计

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Generalized linear ($GL$-) statistics are defined as functionals of an $U$-quantile process and unify different classes of statistics such as $U$-statistics and $L$-statistics. We derive a central limit theorem for $GL$-statistics of strongly mixing sequences and arbitrary dimension of the underlying kernel. For this purpose we establish a limit theorem for $U$-statistics and an invariance principle for $U$-processes together with a convergence rate for the remaining term of the Bahadur representation. An application is given by the generalized median estimator for the tail-parameter of the Pareto distribution, which is commonly used to model exceedances of high thresholds. We use subsampling to calculate confidence intervals and investigate its behaviour under independence and under strong mixing in simulations.
机译:广义线性($ GL $-)统计量定义为$ U $分位数过程的功能,并统一不同类别的统计量,例如$ U $ -statistics和$ L $ -statistics。我们为强混合序列和基础内核的任意维度的$ GL $统计量导出一个中心极限定理。为此,我们建立了一个关于美元统计的极限定理和一个关于美元过程的不变性原理,以及Bahadur表示剩余项的收敛速度。广义中值估计器为帕累托分布的尾部参数提供了一种应用,通常用于建模高阈值的超出。我们使用二次抽样来计算置信区间,并在模拟中研究独立性和强混合下的行为。

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