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首页> 外文期刊>Communications in Statistics. B, Simulation and Computation >Spatial Regression Models Using Inter-Region Distances in a Non-Random Context
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Spatial Regression Models Using Inter-Region Distances in a Non-Random Context

机译:非随机上下文中使用区域间距离的空间回归模型

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This article considers spatial data z(s_1), z(s_2), ···, z(s_n) collected at n locations, with the objective of predicting z(s_0) at another location. The usual method of analysis for this problem is kriging, but here we introduce a new signal-plus-noise model whose essential feature is the identification of hot spots. The signal decays in relation to distance from hot spots. We show that hot spots can be located with high accuracy and that the decay parameter can be estimated accurately. This new-model compares well to kriging in simulations.
机译:本文考虑了在n个位置收集的空间数据z(s_1),z(s_2),··z(s_n),目的是预测另一个位置的z(s_0)。分析此问题的常用方法是克里金法,但在这里我们介绍一种新的信号加噪声模型,其主要特征是识别热点。信号相对于距热点的距离而衰减。我们显示热点可以高精度定位,并且衰减参数可以准确估计。该新模型与模拟中的克里金法比较好。

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