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Permutation and Grouping Methods for Sharpening Gaussian Process Approximations

机译:锐化高斯过程近似的排列和分组方法

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摘要

Vecchia's approximate likelihood for Gaussian process parameters depends on how the observations are ordered, which has been cited as a deficiency. This article takes the alternative standpoint that the ordering can be tuned to sharpen the approximations. Indeed, the first part of the article includes a systematic study of how ordering affects the accuracy of Vecchia's approximation. We demonstrate the surprising result that random orderings can give dramatically sharper approximations than default coordinate-based orderings. Additional ordering schemes are described and analyzed numerically, including orderings capable of improving on random orderings. The second contribution of this article is a new automatic method for grouping calculations of components of the approximation. The grouping methods simultaneously improve approximation accuracy and reduce computational burden. In common settings, reordering combined with grouping reduces Kullback-Leibler divergence from the target model by more than a factor of 60 compared to ungrouped approximations with default ordering. The claims are supported by theory and numerical results with comparisons to other approximations, including tapered covariances and stochastic partial differential equations. Computational details are provided, including the use of the approximations for prediction and conditional simulation. An application to space-time satellite data is presented.
机译:Vecchia对高斯工艺参数的近似可能性取决于如何订购观察,这被引用为缺陷。本文采用替代的观点,即可以调整排序以锐化近似值。实际上,该物品的第一部分包括系统研究,这些研究如何影响Vecchia近似的准确性。我们展示了令人惊讶的结果,随机排序可以大大升高而不是基于默认坐标的排序。数值描述和分析附加的订购方案,包括能够改善随机排序的排序。本文的第二个贡献是一种新的自动方法,用于分组近似分量的计算。分组方法同时提高近似精度并降低计算负担。在常见设置中,与分组结合的重新排序从目标模型降低了与默认排序的未完成的近似值超过60倍的kullback-leibler分歧。该权利要求由理论和数值结果支持,与其他近似的比较,包括锥形协方差和随机偏微分方程。提供了计算细节,包括使用近似用于预测和条件模拟。提出了对时空卫星数据的应用。

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