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Marginally parameterized spatio-temporal models and stepwise maximum likelihood estimation

机译:边缘参数化的时空模型和逐步最大似然估计

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摘要

In order to learn the complex features of large spatio-temporal data, models with a large number of parameters are often required. However, inference is often infeasible due to the computational and memory costs of maximum likelihood estimation (MLE). The class of marginally parameterized (MP) models is introduced, where estimation can be performed efficiently with a sequence of marginal likelihood functions with stepwise maximum likelihood estimation (SMLE). The conditions under which the stepwise estimators are consistent are provided, and it is shown that this class of models includes the diagonal vector autoregressive moving average model. It is demonstrated that the parameters of this model can be obtained at least three orders of magnitude faster with SMLE compared to MLE, with only a small loss in statistical efficiency. A MP model is applied to a spatio-temporal global climate data set consisting of over five million data points, and it is demonstrated how estimation can be achieved in less than one hour on a laptop with a dual core at 2.9 Ghz. (C) 2020 Elsevier B.V. All rights reserved.
机译:为了了解大型时空数据的复杂功能,通常需要具有大量参数的型号。然而,由于最大似然估计(MLE)的计算和内存成本,推断往往是不可行的。介绍了跨越参数化(MP)模型的类,其中可以通过具有逐步最大似然估计(SMLE)的边缘似然函数序列有效地执行估计。提供了逐步估计器是一致的条件,并且示出了这类模型包括对角线向量自回归移动平均模型。结果证明,与MLE相比,该模型的参数至少可以获得至少三个数量级,其统计效率下降。 MP模型应用于由超过五百万个数据点组成的时空全局气候数据集,并且证明了在2.9 GHz的双核上的笔记本电脑上的估算如何在不到一小时内实现估算。 (c)2020 Elsevier B.V.保留所有权利。

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