首页> 外文期刊>The Annals of applied statistics >APPROXIMATING THE CONDITIONAL DENSITY GIVEN LARGE OBSERVED VALUES VIA A MULTIVARIATE EXTREMES FRAMEWORK, WITH APPLICATION TO ENVIRONMENTAL DATA
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APPROXIMATING THE CONDITIONAL DENSITY GIVEN LARGE OBSERVED VALUES VIA A MULTIVARIATE EXTREMES FRAMEWORK, WITH APPLICATION TO ENVIRONMENTAL DATA

机译:通过多个极值框架近似条件密度给定的大观测值,并将其应用于环境数据

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摘要

Phenomena such as air pollution levels are of greatest interest when observations are large, but standard prediction methods are not specifically designed for large observations. We propose a method, rooted in extreme value theory, which approximates the conditional distribution of an unobserved component of a random vector given large observed values. Specifically, for Z = (Z_1,..., Z_d)~T and Z_(?d) = (Z_1,. .., Z_(d?1))~T, the method approximates the conditional distribution of [Z_d |Z_(-d) = z_(-d)] when||z_(-d)|| > r?. The approach is based on the assumption that Z is a multivariate regularly varying random vector of dimension d. The conditional distribution approximation relies on knowledge of the angular measure of Z, which provides explicit structure for dependence in the distribution's tail. As the method produces a predictive distribution rather than just a point predictor, one can answer any question posed about the quantity being predicted, and, in particular, one can assess how well the extreme behavior is represented. Using a fitted model for the angular measure, we apply our method to nitrogen dioxide measurements in metropolitan Washington DC. We obtain a predictive distribution for the air pollutant at a location given the air pollutant's measurements at four nearby locations and given that the norm of the vector of the observed measurements is large.
机译:当观测值很大时,诸如空气污染水平之类的现象将是最受关注的,但是标准的预测方法并不是专门为大型观测值设计的。我们提出了一种基于极值理论的方法,该方法在给定较大观察值的情况下近似随机向量中未观察到的分量的条件分布。具体地,对于Z =(Z_1,...,Z_d)〜T并且Z_(Δd)=(Z_1,..,Z_(d≥1))〜T,该方法近似[Z_d |的条件分布。当|| z _(-d)||时,Z _(-d)= z _(-d)] > r?。该方法基于以下假设:Z是尺寸为d的多元规则变化的随机向量。条件分布近似依赖于Z角度量度的知识,这为依赖于分布尾部提供了明确的结构。由于该方法产生的是预测分布,而不仅仅是点预测,因此可以回答有关被预测量的任何问题,尤其是可以评估极端行为的表现程度。使用拟合的角度测量模型,我们将我们的方法应用于大都会华盛顿特区的二氧化氮测量。给定附近四个位置的空气污染物测量值,并且鉴于观测到的测量值向量的范数较大,我们可以得出该位置的空气污染物预测分布。

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