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Asymptotics for the linear kernel quantile estimator

机译:线性核Quantile估算器的渐近学

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摘要

The method of linear kernel quantile estimator was proposed by Parzen (J Am Stat Assoc 74:105-121, 1979), which is a reasonable estimator for Value-at-risk (VaR). In this paper, we mainly investigate the asymptotic properties for linear kernel quantile estimator of VaR based on.-mixing samples. At first, the Bahadur representation for sample quantiles under.-mixing sequence is established. By using the Bahadur representation for sample quantiles, we further obtain the Bahadur representation for linear kernel quantile estimator of VaR in sense of almost surely convergence with the rate O similar to n-1/2 log- a n similar to for some a > 0. In addition, the strong consistency for the linear kernel quantile estimator of VaR with the convergence rate O similar to n-1/2(log log n)1/2 similar to is established, and the asymptotic normality for linear kernel quantile estimator of VaR based on.-mixing samples is obtained. Finally, a simulation study and a real data analysis are undertaken to assess the finite sample performance of the results that we established.
机译:Parzen提出了线性核定位估计器的方法(J AM STAT ADJ4:105-121,1979),这是一种合理的估计,用于价值 - 风险(VAR)。在本文中,我们主要研究了基于混合样品的VAR线性核定位估计的渐近性能。首先,建立了混合序列下的样品量数的巴哈德表示。通过使用样品量级的Bahadur表示,我们进一步获得了VAR的线性内核定位估计器的Bahadur表示,几乎肯定会聚,其速率o类似于N-1/2的速率,类似于一些A> 0。此外,RAM的线性内核定位估计器的强常态与类似于N-1/2(LOG LOG N)1/2类似的收敛速率O,以及var的线性内核定量估计器的渐近常态基于型混合样品。最后,进行了模拟研究和实际数据分析,以评估我们建立的结果的有限样本性能。

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