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Likelihood approximation with hierarchical matrices for large spatial datasets

机译:具有大型空间数据集的分层矩阵的似然近似

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The unknown parameters (variance, smoothness, and covariance length) of a spatial covariance function can be estimated by maximizing the joint Gaussian log-likelihood function. To overcome cubic complexity in the linear algebra, the discretized covariance function is approximated in the hierarchical (H-) matrix format. The H-matrix format has a log-linear computational cost and O(kn log n) storage, where the rank k is a small integer, and n is the number of locations. The H-matrix technique can approximate general covariance matrices (also inhomogeneous) discretized on a fairly general mesh that is not necessarily axes-parallel, and neither the covariance matrix itself nor its inverse has to be sparse. It is investigated how the H-matrix approximation error influences the estimated parameters. Numerical examples with Monte Carlo simulations, where the true values of the unknown parameters are given, and an application to soil moisture data with unknown parameters are presented. The C, C++ codes and data are freely available. (C) 2019 The Author(s). Published by Elsevier B.V.
机译:通过最大化关节高斯对数似然函数,可以估计空间协方差函数的未知参数(方差,平滑度和协方差长度)。为了克服线性代数中的立方体复杂性,离散的协方差函数以分层(H-)矩阵格式近似。 H-Matrix格式具有对数线性计算成本和O(kn log n)存储,其中等级k是一个小整数,n是位置的数量。 H-Matrix技术可以近似在不一定轴平行的相当通用网上离散化的一般协方差矩阵(也不是不均匀),并且协方差矩阵本身并不是其逆稀疏。研究了H型矩阵近似误差如何影响估计的参数。具有蒙特卡罗模拟的数值例子,其中给出了未知参数的真实值,并提出了具有未知参数的土壤湿度数据的应用。 C,C ++代码和数据可自由可用。 (c)2019年作者。 elsevier b.v出版。

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