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Impact of Dependence on Parameter Estimates of Autoregressive Process with Gumbel Distributed Innovation

机译:依赖关系对Gumbel分布式创新的自回归过程参数估计的影响

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Recent studies have shown that independent identical distributed Gaussian random variables is not suitable for modelling extreme values observed during extremal events. However, many real life data on extreme values are dependent and stationary rather than the conventional independent identically distributed data. We propose a stationary autoregressive (AR) process with Gumbel distributed innovation and characterise the short-term dependence among maxima of an (AR) process over a range of sample sizes with varying degrees of dependence. We estimate the maximum likelihood of the parameters of the Gumbel AR process and its residuals, and evaluate the performance of the parameter estimates. The AR process is fitted to the Gumbel-generalised Pareto (GPD) distribution and we evaluate the performance of the parameter estimates fitted to the cluster maxima and the original series. Ignoring the effect of dependence leads to overestimation of the location parameter of the Gumbel-AR (1) process. The estimate of the location parameter of the AR process using the residuals gives a better estimate. Estimate of the scale parameter perform marginally better for the original series than the residual estimate. The degree of clustering increases as dependence is enhance for the AR process. The Gumbel-AR(1) fitted to the Gumbel-GPD shows that the estimates of the scale and shape parameters fitted to the cluster maxima perform better as sample size increases, however, ignoring the effect of dependence lead to an underestimation of the parameter estimates of the scale parameter. The shape parameter of the original series gives a superior estimate compare to the threshold excesses fitted to the Gumbel-GPD.
机译:最近的研究表明,独立的相同分布的高斯随机变量不适合建模极端事件期间观察到的极值。但是,许多关于极值的现实数据是相关的和固定的,而不是常规的独立的均匀分布的数据。我们提出了具有Gumbel分布式创新的平稳自回归(AR)过程,并描述了在依赖程度不同的样本量范围内(AR)最大值之间的短期依赖关系。我们估计Gumbel AR过程参数及其残差的最大可能性,并评估参数估计的性能。 AR过程适合于Gumbel广义Pareto(GPD)分布,我们评估适合于聚类最大值和原始序列的参数估计的性能。忽略依赖的影响会导致高估Gumbel-AR(1)过程的位置参数。使用残差对AR过程的位置参数的估计给出了更好的估计。对于原始序列,比例参数的估计要比残差估计略好。随着对AR过程的依赖性增强,聚类的程度增加。拟合到Gumbel-GPD的Gumbel-AR(1)表明,随着样本量的增加,拟合到聚类最大值的比例和形状参数的估计效果更好,但是,忽略依赖的影响会导致参数估计的低估比例参数。与适合Gumbel-GPD的阈值过高相比,原始系列的形状参数给出了更好的估计。

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