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A Reparametrization Approach for Dynamic Space-Time Models

机译:动态时空模型的重新参数化方法

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摘要

Researchers in diverse areas such as environmental and health sciences are increasingly working with data collected across space and time. The space-time processes that are generally used in practice are often complicated in the sense that the auto-dependence structure across space and time is non-trivial, often non-separable and non-stationary in space and time. Moreover, the dimension of such data sets across both space and time can be very large leading to computational difficulties due to numerical instabilities. Hence, space-time modeling is a challenging task and in particular parameter estimation based on complex models can be problematic due to the curse of dimensionality. We propose a novel reparametrization approach to fit dynamic space-time models which allows the use of a very general form for the spatial covariance function. Our modeling contribution is to present an unconstrained reparametrization method for a covariance function within dynamic space-time models. A major benefit of the proposed unconstrained reparametrization method is that we are able to implement the modeling of a very high dimensional covariance matrix that automatically maintains the positive definiteness constraint. We demonstrate the applicability of our proposed reparametrized dynamic space-time models for a large data set of total nitrate concentrations.
机译:环境和健康科学等不同领域的研究人员正在越来越多地处理跨时空收集的数据。在实践中通常使用的时空过程通常是复杂的,因为跨时空的自动依赖结构是不平凡的,在时空上通常是不可分离的且不稳定的。此外,由于数值的不稳定性,这种数据集在空间和时间上的维度可能非常大,从而导致计算困难。因此,时空建模是一项艰巨的任务,并且由于维数的诅咒,基于复杂模型的参数估计尤其会成为问题。我们提出了一种新颖的重新参数化方法来拟合动态时空模型,该方法允许对空间协方差函数使用非常通用的形式。我们的建模贡献是为动态时空模型内的协方差函数提供一种无约束的重新参数化方法。所提出的无约束重新参数化方法的主要好处是,我们能够实现非常高维的协方差矩阵的建模,该矩阵可以自动保持正定性约束。我们证明了我们提出的重新参数化动态时空模型对于总硝酸盐浓度的大型数据集的适用性。

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