We consider the effective sample size, based on Godambe information, for block likelihood inference which is an attractive and computationally feasible alternative to full likelihood inference for large correlated datasets. With reference to a Gaussian random field having a constant mean, we explore how the choice of blocks impacts this effective sample size. It is seen that spreading out the spatial points within each block, instead of keeping them close together, can lead to considerable gains while retaining computational simplicity. Analytical results in this direction are obtained under the AR(1) model. The insights so found facilitate the study of other models, including correlation models on a plane, where closed form expressions are intractable.
翻译:我们认为,根据Godambe信息,有效的样本规模是有效的样本规模,因为根据Godambe信息,这种可能性是吸引人和计算上可行的替代方法,可以替代对大型相关数据集的完全可能性推断。关于具有恒定平均值的高斯随机字段,我们探讨了区块的选择如何影响这种有效的样本规模。我们发现,每个区块的空间点分散,而不是保持它们之间的紧密联系,在保持计算简单性的同时,可以带来相当大的收益。这方面的分析结果是在AR(1)模型下取得的。所发现的洞察结果有助于研究其他模型,包括封闭式表达方式难以解决的平面上的相关模型。