tinyVAST:具有表达接口的R包,用于指定多变量时空模型中的滞后和同步效应

IF 6.3 1区 环境科学与生态学 Q1 ECOLOGY
James T. Thorson, Sean C. Anderson, Pamela Goddard, Christopher N. Rooper
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引用次数: 0

摘要

目的多元时空模型具有广泛的应用前景,但其结构复杂,可能会阻碍其广泛应用。我们从软件用户和统计学家两个角度介绍了R包tinyVAST。从用户的角度来看,tinyVAST采用了一个广泛使用的公式界面来指定广义的可加性模型,并将其与参数相结合,以指定变量之间的空间和时空相互作用。这些交互使用箭头符号(来自结构方程模型)或扩展的箭头-滞后符号来指定,该符号允许变量之间随时间的同步、滞后和递归依赖。用户还可以为面(网格)、连续(点计数)或流网络数据指定空间域。从统计学家的角度来看,tinyVAST构建了表示多元时空变化的稀疏精度矩阵,并通过指定广义线性混合模型(GLMM)来估计参数。这个表达界面包括向量自回归、经验正交函数、空间因子分析和ARIMA模型。为了证明这一点,我们拟合了阿拉斯加湾和阿留申群岛两个调查平台对珊瑚、海绵、岩鱼和比目鱼的采样数据。然后,我们使用关于栖息地驱动因素和调查可探测性的不同假设,比较了八种可供选择的模型结构。模型选择表明,拖网摄像机和底拖网装置在可探测性上存在空间差异,但比目鱼和岩石鱼的底层密度相同,岩石鱼与海绵呈正相关,而比目鱼与珊瑚呈负相关。我们的结论是,tinyVAST可以用来测试复杂的依赖关系,这些依赖关系代表了研究和现实世界政策评估的替代结构假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

tinyVAST: R Package With an Expressive Interface to Specify Lagged and Simultaneous Effects in Multivariate Spatio-Temporal Models

tinyVAST: R Package With an Expressive Interface to Specify Lagged and Simultaneous Effects in Multivariate Spatio-Temporal Models

Aim

Multivariate spatio-temporal models are widely applicable, but specifying their structure is complicated and may inhibit wider use. We introduce the R package tinyVAST from two viewpoints: the software user and the statistician.

Innovation

From the user viewpoint, tinyVAST adapts a widely used formula interface to specify generalised additive models and combines this with arguments to specify spatial and spatio-temporal interactions among variables. These interactions are specified using arrow notation (from structural equation models) or an extended arrow-and-lag notation that allows simultaneous, lagged and recursive dependencies among variables over time. The user also specifies a spatial domain for areal (gridded), continuous (point-count) or stream-network data. From the statistician viewpoint, tinyVAST constructs sparse precision matrices representing multivariate spatio-temporal variation, and parameters are estimated by specifying a generalised linear mixed model (GLMM). This expressive interface encompasses vector autoregressive, empirical orthogonal functions, spatial factor analysis and ARIMA models.

Main Conclusion

To demonstrate, we fit to data from two survey platforms sampling corals, sponges, rockfishes and flatfishes in the Gulf of Alaska and Aleutian Islands. We then compare eight alternative model structures using different assumptions about habitat drivers and survey detectability. Model selection suggests that towed-camera and bottom trawl gears have spatial variation in detectability but sample the same underlying density of flatfishes and rockfishes and that rockfishes are positively associated with sponges while flatfishes are negatively associated with corals. We conclude that tinyVAST can be used to test complicated dependencies representing alternative structural hypotheses for research and real-world policy evaluation.

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来源期刊
Global Ecology and Biogeography
Global Ecology and Biogeography 环境科学-生态学
CiteScore
12.10
自引率
3.10%
发文量
170
审稿时长
3 months
期刊介绍: Global Ecology and Biogeography (GEB) welcomes papers that investigate broad-scale (in space, time and/or taxonomy), general patterns in the organization of ecological systems and assemblages, and the processes that underlie them. In particular, GEB welcomes studies that use macroecological methods, comparative analyses, meta-analyses, reviews, spatial analyses and modelling to arrive at general, conceptual conclusions. Studies in GEB need not be global in spatial extent, but the conclusions and implications of the study must be relevant to ecologists and biogeographers globally, rather than being limited to local areas, or specific taxa. Similarly, GEB is not limited to spatial studies; we are equally interested in the general patterns of nature through time, among taxa (e.g., body sizes, dispersal abilities), through the course of evolution, etc. Further, GEB welcomes papers that investigate general impacts of human activities on ecological systems in accordance with the above criteria.
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