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Bayesian time-varying quantile regression to extremes

机译:贝叶斯时变分位数回归到极值

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摘要

Maximum analysis consists of modeling the maximums of a data set by considering a specific distribution. Extreme value theory (EVT) shows that, for a sufficiently large block size, the maxima distribution is approximated by the generalized extreme value (GEV) distribution. Under EVT, it is important to observe the high quantiles of the distribution. In this sense, quantile regression techniques fit the data analysis of maxima by using the GEV distribution. In this context, this work presents the quantile regression extension for the GEV distribution. In addition, a time-varying quantile regression model is presented, and the important properties of this approach are displayed. The parameter estimation of these new models is carried out under the Bayesian paradigm. The results of the temperature data and river quota application show the advantage of using this model, which allows us to estimate directly the quantiles as a function of the covariates. This shows which of them influences the occurrence of extreme temperature and the magnitude of this influence.
机译:最大值分析包括通过考虑特定分布来对数据集的最大值进行建模。极值理论(EVT)表明,对于足够大的块大小,最大值分布由广义极值(GEV)分布近似。在EVT下,重要的是观察分布的高分位数。从这个意义上讲,分位数回归技术通过使用GEV分布来拟合最大值的数据分析。在这种情况下,这项工作提出了GEV分布的分位数回归扩展。此外,提出了时变分位数回归模型,并显示了该方法的重要特性。这些新模型的参数估计是在贝叶斯范式下进行的。温度数据和河流定额应用的结果显示了使用此模型的优势,这使我们可以直接估计分位数作为协变量的函数。这表明其中哪些因素会影响极端温度的发生以及这种影响的程度。

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