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NONSEPARABLE DYNAMIC NEAREST NEIGHBOR GAUSSIAN PROCESS MODELS FOR LARGE SPATIO-TEMPORAL DATA WITH AN APPLICATION TO PARTICULATE MATTER ANALYSIS

机译:时空数据的不可分动态近邻近高斯过程模型及其在颗粒物分析中的应用

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摘要

Particulate matter (PM) is a class of malicious environmental pollutants known to be detrimental to human health. Regulatory efforts aimed at curbing PM levels in different countries often require high resolution space–time maps that can identify red-flag regions exceeding statutory concentration limits. Continuous spatio-temporal Gaussian Process (GP) models can deliver maps depicting predicted PM levels and quantify predictive uncertainty. However, GP-based approaches are usually thwarted by computational challenges posed by large datasets. We construct a novel class of scalable Dynamic Nearest Neighbor Gaussian Process (DNNGP) models that can provide a sparse approximation to any spatio-temporal GP (e.g., with nonseparable covariance structures). The DNNGP we develop here can be used as a sparsity-inducing prior for spatio-temporal random effects in any Bayesian hierarchical model to deliver full posterior inference. Storage and memory requirements for a DNNGP model are linear in the size of the dataset, thereby delivering massive scalability without sacrificing inferential richness. Extensive numerical studies reveal that the DNNGP provides substantially superior approximations to the underlying process than low-rank approximations. Finally, we use the DNNGP to analyze a massive air quality dataset to substantially improve predictions of PM levels across Europe in conjunction with the LOTOS-EUROS chemistry transport models (CTMs).
机译:颗粒物(PM)是一类有害的环境污染物,已知对人体健康有害。旨在限制不同国家的PM水平的监管工作通常需要高分辨率的时空图,以识别超过法定浓度极限的危险信号区域。连续的时空高斯过程(GP)模型可以提供描述预测PM水平的图并量化预测不确定性。但是,基于GP的方法通常会受到大型数据集带来的计算挑战的阻碍。我们构建了一类可扩展的动态最近邻高斯过程(DNNGP)模型,该模型可以为任何时空GP提供稀疏近似(例如,具有不可分的协方差结构)。我们在此开发的DNNGP可以在任何贝叶斯层次模型中用作时空随机效应的稀疏诱导先验,以提供完整的后验推论。 DNNGP模型的存储和内存要求在数据集的大小上是线性的,从而在不牺牲推断丰富性的情况下提供了巨大的可伸缩性。大量的数值研究表明,与低秩逼近相比,DNNGP对底层过程提供了明显更好的逼近。最后,我们结合LOTOS-EUROS化学迁移模型(CTM),使用DNNGP分析了大量的空气质量数据集,从而大大改善了欧洲对PM含量的预测。

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