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首页> 外文期刊>Statistica Sinica >EXPLORING A NEW CLASS OF NON-STATIONARY SPATIAL GAUSSIAN RANDOM FIELDS WITH VARYING LOCAL ANISOTROPY
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EXPLORING A NEW CLASS OF NON-STATIONARY SPATIAL GAUSSIAN RANDOM FIELDS WITH VARYING LOCAL ANISOTROPY

机译:随着局部各向异性的变化,探索一类新的非平稳空间高斯随机场

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Gaussian random fields (GRFs) play an important part in spatial modelling, but can be computationally infeasible for general covariance structures. An efficient approach is to specify GRFs via stochastic partial differential equations (SPDEs) and derive Gaussian Markov random field (GMRF) approximations of the solutions. We consider the construction of a class of non-stationary GRFs with varying local anisotropy, where the local anisotropy is introduced by allowing the coefficients in the SPDE to vary with position. This is done by using a form of diffusion equation driven by Gaussian white noise with a spatially varying diffusion matrix. This allows for the introduction of parameters that control the GRF by parametrizing the diffusion matrix. These parameters and the GRF may be considered to be part of a hierarchical model and the parameters estimated in a Bayesian framework. The results show that the use of an SPDE with non-constant coefficients is a promising way of creating non-stationary spatial GMRFs that allow for physical interpretability of the parameters, although there are several remaining challenges that would need to be solved before these models can be put to general practical use.
机译:高斯随机场(GRF)在空间建模中起着重要作用,但对于一般协方差结构在计算上是不可行的。一种有效的方法是通过随机偏微分方程(SPDE)指定GRF并导出解决方案的高斯马尔可夫随机场(GMRF)近似值。我们考虑构造一类具有变化的局部各向异性的非平稳GRF,其中通过允许SPDE中的系数随位置变化来引入局部各向异性。这是通过使用由高斯白噪声驱动的扩散方程式来实现的,该扩散方程具有空间变化的扩散矩阵。这允许引入通过参数化扩散矩阵来控制GRF的参数。这些参数和GRF可以被视为层次模型的一部分,并且可以在贝叶斯框架中估计参数。结果表明,使用具有非恒定系数的SPDE是创建可用于参数物理解释的非平稳空间GMRF的有前途的方法,尽管在这些模型可以使用之前还需要解决一些剩余的挑战投入实际使用。

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