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首页> 外文期刊>Journal of the American statistical association >Estimating Space and Space-Time Covariance Functions for Large Data Sets: A Weighted Composite Likelihood Approach
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Estimating Space and Space-Time Covariance Functions for Large Data Sets: A Weighted Composite Likelihood Approach

机译:估计大数据集的空间和时空协方差函数:加权复合似然法

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摘要

In this article, we propose two methods for estimating space and space-time covariance functions from a Gaussian random field, based on the composite likelihood idea. The first method relies on the maximization of a weighted version of the composite likelihood function, while the second one is based on the solution of a weighted composite score equation. This last scheme is quite general and could be applied to any kind of composite likelihood. An information criterion for model selection based on the first estimation method is also introduced. The methods are useful for practitioners looking for a good balance between computational complexity and statistical efficiency. The effectiveness of the methods is illustrated through examples, simulation experiments, and by analyzing a dataset on ozone measurements.
机译:在本文中,我们基于复合似然思想,提出了两种从高斯随机场估计空间和时空协方差函数的方法。第一种方法依赖于合成似然函数的加权版本的最大化,而第二种方法则基于加权的综合得分方程的解。最后一种方案非常笼统,可以应用于任何种类的复合可能性。还介绍了基于第一估计方法的模型选择信息准则。该方法对于在计算复杂度和统计效率之间寻求良好平衡的从业者很有用。通过示例,模拟实验以及通过分析臭氧测量数据集来说明这些方法的有效性。

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