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Semiparametric Estimation and Selection for Nonstationary Spatial Covariance Functions

机译:非平稳空间协方差函数的半参数估计和选择

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摘要

We propose a method for estimating nonstationary spatial covariance functions by representing a spatial process as a linear combination of some local basis functions with uncorrelated random coefficients and some stationary processes, based on spatial data sampled in space with repeated measurements. By incorporating a large collection of local basis functions with various scales at various locations and stationary processes with various degrees of smoothness, the model is flexible enough to represent a wide variety of nonstationary spatial features. The covariance estimation and model selection are formulated as a regression problem with the sample covariances as the response and the covariances corresponding to the local basis functions and the stationary processes as the predictors. A constrained least squares approach is applied to select appropriate basis functions and stationary processes as well as estimate parameters simultaneously. In addition, a constrained generalized least squares approach is proposed to further account for the dependencies among the response variables. A simulation experiment shows that our method performs well in both covariance function estimation and spatial prediction. The methodology is applied to a U.S. precipitation dataset for illustration. Supplemental materials relating to the application are available online.
机译:我们提出了一种基于空间数据的重复测量,通过将空间过程表示为一些具有不相关随机系数的局部基函数和一些平稳过程的线性组合,来估计非平稳空间协方差函数的方法。通过在各种位置并以各种平滑度并入具有各种比例的大量本地基础函数,该模型具有足够的灵活性,可以表示各种各样的非平稳空间特征。协方差估计和模型选择被公式化为一个回归问题,其中样本协方差作为响应,而与局部基函数和平稳过程相对应的协方差作为预测变量。应用约束最小二乘法来选择适当的基函数和平稳过程以及同时估计参数。另外,提出了一种约束广义最小二乘法,以进一步考虑响应变量之间的依赖性。仿真实验表明,我们的方法在协方差函数估计和空间预测方面均表现良好。该方法应用于美国降水数据集以进行说明。有关该应用程序的补充材料可在线获得。

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  • 来源
    《Journal of Computational and Graphical Statistics》 |2010年第1期|p.117-139|共23页
  • 作者单位

    Ya-Mei Chang is Postdoctoral Fellow, Mathematics Informatics and Statistics, Australian Commonwealth Scientific and Research Organization, Floreat, WA 6014, Australia . Nan-Jung Hsu is Professor, Institute of Statistics, National Tsing-Huang University, Hsin-Chu, 300, Taiwan. Hsin-Cheng Huang is Research Fellow, Institute of Statistical Science, Nankang Taipei, 115, Taiwan.;

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