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A Class of Convolution-Based Models for Spatio-Temporal Processes with Non-Separable Covariance Structure

机译:具有不可分离协方差结构的时空过程的基于卷积的模型

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In this article, we propose a new parametric family of models for real-valued spatio-temporal stochastic processes S(x, t) and show how low-rank approximations can be used to overcome the computational problems that arise in fitting the proposed class of models to large datasets. Separable covariance models, in which the spatio-temporal covariance function of S(x, t) factorizes into a product of purely spatial and purely temporal functions, are often used as a convenient working assumption but are too inflexible to cover the range of covariance structures encountered in applications. We define positive and negative non-separability and show that in our proposed family we can capture positive, zero and negative non-separability by varying the value of a single parameter.
机译:在本文中,我们为实值时空随机过程S(x,t)提出了一个新的参数系列模型,并展示了如何使用低秩逼近来克服在拟合提出的类别时出现的计算问题。大型数据集的模型。可分离协方差模型(其中S(x,t)的时空协方差函数分解为纯空间和纯时间函数的乘积)通常用作方便的工作假设,但过于僵化,无法涵盖协方差结构的范围在应用程序中遇到。我们定义了正和负的不可分性,并表明在我们提出的族中,我们可以通过更改单个参数的值来捕获正,零和负的不可分性。

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