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首页> 外文期刊>Journal of the American statistical association >Confidence Regions for Spatial Excursion Sets From Repeated Random Field Observations, With an Application to Climate
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Confidence Regions for Spatial Excursion Sets From Repeated Random Field Observations, With an Application to Climate

机译:重复随机野外观测的空间游览集置信区域及其在气候中的应用

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摘要

The goal of this article is to give confidence regions for the excursion set of a spatial function above a given threshold from repeated noisy observations on a fine grid of fixed locations. Given an asymptotically Gaussian estimator of the target function, a pair of data-dependent nested excursion sets are constructed that are sub- and super-sets of the true excursion set, respectively, with a desired confidence. Asymptotic coverage probabilities are determined via a multiplier bootstrap method, not requiring Gaussianity of the original data nor stationarity or smoothness of the limiting Gaussian field. The method is used to determine regions in North America where the mean summer and winter temperatures are expected to increase by mid-21st century by more than 2 degrees Celsius.
机译:本文的目的是根据固定位置的细网格上的重复噪声观测,给出高于给定阈值的空间函数偏移集的置信区域。给定目标函数的渐近高斯估计,将构造一对数据依赖的嵌套偏移集,它们分别是具有期望置信度的真实偏移集的子集和超集。渐近覆盖概率是通过乘数自举法确定的,不需要原始数据的高斯性,也不需要限制高斯场的平稳性或平滑性。该方法用于确定北美地区,到21世纪中叶,夏季和冬季的平均温度预计会升高2摄氏度以上。

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