具有随机协方差矩阵的多变量近邻高斯过程

IF 1.5 3区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Environmetrics Pub Date : 2024-01-02 DOI:10.1002/env.2839
Isabelle Grenier, Bruno Sansó, Jessica L. Matthews
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引用次数: 0

摘要

我们提出了一种基于正态逆 Wishart 框架的非稳态空间模型,以一组最近邻为条件。该模型被称为具有随机协方差矩阵的近邻高斯过程,适用于单变量和多变量空间环境,允许完全灵活的协方差结构,不施加任何静态或各向同性限制。此外,该模型还能处理重复观测数据和缺失数据。我们考虑了一种基于空间随机效应积分的方法,这种方法可以快速推断模型参数。我们还考虑了一种完全分层的方法,利用模型引起的稀疏结构来执行快速蒙特卡罗计算。利用模型的自适应局部结构可以实现高水平的并行化,从而达到很高的计算效率。我们通过单变量和双变量模拟,以及由反照率测量组成的两颗静止卫星的观测数据,说明了该模型的性能。
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Multivariate nearest-neighbors Gaussian processes with random covariance matrices

We propose a non-stationary spatial model based on a normal-inverse-Wishart framework, conditioning on a set of nearest-neighbors. The model, called nearest-neighbor Gaussian process with random covariance matrices is developed for both univariate and multivariate spatial settings and allows for fully flexible covariance structures that impose no stationarity or isotropic restrictions. In addition, the model can handle duplicate observations and missing data. We consider an approach based on integrating out the spatial random effects that allows fast inference for the model parameters. We also consider a full hierarchical approach that leverages the sparse structures induced by the model to perform fast Monte Carlo computations. Strong computational efficiency is achieved by leveraging the adaptive localized structure of the model that allows for a high level of parallelization. We illustrate the performance of the model with univariate and bivariate simulations, as well as with observations from two stationary satellites consisting of albedo measurements.

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来源期刊
Environmetrics
Environmetrics 环境科学-环境科学
CiteScore
2.90
自引率
17.60%
发文量
67
审稿时长
18-36 weeks
期刊介绍: Environmetrics, the official journal of The International Environmetrics Society (TIES), an Association of the International Statistical Institute, is devoted to the dissemination of high-quality quantitative research in the environmental sciences. The journal welcomes pertinent and innovative submissions from quantitative disciplines developing new statistical and mathematical techniques, methods, and theories that solve modern environmental problems. Articles must proffer substantive, new statistical or mathematical advances to answer important scientific questions in the environmental sciences, or must develop novel or enhanced statistical methodology with clear applications to environmental science. New methods should be illustrated with recent environmental data.
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