空间统计学中的最近邻稀疏Cholesky矩阵

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2021-12-08 DOI:10.1002/wics.1574
A. Datta
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引用次数: 7

摘要

高斯过程(GP)是空间统计学家工具箱中的主要内容。通过最近的几项统计创新,使用GPs分析大型地理空间数据集的计算障碍已在很大程度上得到缓解。最近邻高斯过程(NNGP)由于其经验上的成功,已成为此类大规模地理空间分析的主要候选者之一。本文综述了NNGP与空间精度(逆协方差)矩阵的稀疏Cholesky因子的联系。综述的重点是这些稀疏Cholesky矩阵,它们是通用的,并且最近发现了许多不同的应用,除了NNGP在空间(广义)线性模型中用于快速参数估计和预测的主要用途之外。特别是,我们讨论了稀疏NNGP-Cholesky矩阵的应用,以解决空间自举、高斯随机场大规模实现的模拟以及使用随机森林对GP的非参数均值函数估计的扩展中的多方面计算问题。我们还回顾了一个基于稀疏Cholesky的区域(地理聚合)数据模型,该模型解决了现有区域模型长期存在的可解释性问题。最后,我们强调了这种稀疏的Cholesky近似的一些尚未解决的问题,这些问题值得进一步研究。
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Nearest‐neighbor sparse Cholesky matrices in spatial statistics
Gaussian process (GP) is a staple in the toolkit of a spatial statistician. Well‐documented computing roadblocks in the analysis of large geospatial datasets using GPs have now largely been mitigated via several recent statistical innovations. Nearest neighbor Gaussian process (NNGP) has emerged as one of the leading candidates for such massive‐scale geospatial analysis owing to their empirical success. This article reviews the connection of NNGP to sparse Cholesky factors of the spatial precision (inverse‐covariance) matrix. Focus of the review is on these sparse Cholesky matrices which are versatile and have recently found many diverse applications beyond the primary usage of NNGP for fast parameter estimation and prediction in the spatial (generalized) linear models. In particular, we discuss applications of sparse NNGP Cholesky matrices to address multifaceted computational issues in spatial bootstrapping, simulation of large‐scale realizations of Gaussian random fields, and extensions to nonparametric mean function estimation of a GP using random forests. We also review a sparse‐Cholesky‐based model for areal (geographically aggregated) data that addresses long‐established interpretability issues of existing areal models. Finally, we highlight some yet‐to‐be‐addressed issues of such sparse Cholesky approximations that warrant further research.
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
31
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