A flexible and interpretable spatial covariance model for data on graphs

IF 1.5 3区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Environmetrics Pub Date : 2024-08-17 DOI:10.1002/env.2879
Michael F. Christensen, Peter D. Hoff
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Abstract

Spatial models for areal data are often constructed such that all pairs of adjacent regions are assumed to have near‐identical spatial autocorrelation. In practice, data can exhibit dependence structures more complicated than can be represented under this assumption. In this article, we develop a new model for spatially correlated data observed on graphs, which can flexibly represented many types of spatial dependence patterns while retaining aspects of the original graph geometry. Our method implies an embedding of the graph into Euclidean space wherein covariance can be modeled using traditional covariance functions, such as those from the Matérn family. We parameterize our model using a class of graph metrics compatible with such covariance functions, and which characterize distance in terms of network flow, a property useful for understanding proximity in many ecological settings. By estimating the parameters underlying these metrics, we recover the “intrinsic distances” between graph nodes, which assist in the interpretation of the estimated covariance and allow us to better understand the relationship between the observed process and spatial domain. We compare our model to existing methods for spatially dependent graph data, primarily conditional autoregressive models and their variants, and illustrate advantages of our method over traditional approaches. We fit our model to bird abundance data for several species in North Carolina, and show how it provides insight into the interactions between species‐specific spatial distributions and geography.
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灵活、可解释的图形数据空间协方差模型
通常构建的等值数据空间模型是假设所有相邻区域对都具有近乎相同的空间自相关性。实际上,数据可能表现出比这一假设更复杂的依赖结构。在本文中,我们为在图形上观察到的空间相关数据建立了一个新模型,它可以灵活地表示多种类型的空间依赖模式,同时保留了原始图形几何的某些方面。我们的方法意味着将图嵌入欧几里得空间,其中的协方差可以使用传统的协方差函数建模,例如马特恩函数族中的协方差函数。我们使用一类与此类协方差函数兼容的图度量来对模型进行参数化,这些度量以网络流来描述距离,这一特性有助于理解许多生态环境中的邻近性。通过估计这些度量的基本参数,我们可以恢复图节点之间的 "固有距离",这有助于解释估计的协方差,使我们能够更好地理解观察到的过程与空间域之间的关系。我们将我们的模型与现有的空间依赖图数据方法(主要是条件自回归模型及其变体)进行了比较,并说明了我们的方法与传统方法相比的优势。我们将我们的模型拟合到北卡罗来纳州多个物种的鸟类丰度数据中,并展示了该模型如何深入揭示物种特定空间分布与地理之间的相互作用。
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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.
期刊最新文献
Issue Information A hierarchical constrained density regression model for predicting cluster‐level dose‐response Under the mantra: ‘Make use of colorblind friendly graphs’ A flexible and interpretable spatial covariance model for data on graphs How to find the best sampling design: A new measure of spatial balance
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