空间贝叶斯神经网络

IF 2.1 2区 数学 Q3 GEOSCIENCES, MULTIDISCIPLINARY Spatial Statistics Pub Date : 2024-04-01 DOI:10.1016/j.spasta.2024.100825
Andrew Zammit-Mangion , Michael D. Kaminski , Ba-Hien Tran , Maurizio Filippone , Noel Cressie
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引用次数: 0

摘要

空间过程统计模型在空间数据分析中起着核心作用。然而,人们通常采用的是简单、可解释且易于理解的模型,尽管通过先验和后验预测检查可以发现,这些模型并不能很好地描述所关注的基本过程的空间异质性。在这里,我们提出了一类新的、灵活的空间过程模型,我们称之为空间贝叶斯神经网络(SBNN)。空间贝叶斯神经网络利用贝叶斯神经网络的表征能力,通过在网络中加入空间 "嵌入层 "以及可能的空间变化网络参数,为空间环境量身定制。校准 SBNN 的方法是将其在空间细网格位置上的有限维分布与感兴趣的目标过程相匹配。该过程可能很容易模拟,也可能有很多现实情况。我们提出了几种 SBNN 的变体,其中大多数都能比复杂程度类似的传统 BNN 更好地匹配目标过程在所选网格上的有限维分布。我们还证明,SBNN 可用来表示各种实际中常用的空间过程,如高斯过程、对数正态过程和最大稳定过程。我们简要讨论了可用 SBNNs 进行推理的工具,最后讨论了它们的优势和局限性。
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Spatial Bayesian neural networks

Statistical models for spatial processes play a central role in analyses of spatial data. Yet, it is the simple, interpretable, and well understood models that are routinely employed even though, as is revealed through prior and posterior predictive checks, these can poorly characterise the spatial heterogeneity in the underlying process of interest. Here, we propose a new, flexible class of spatial-process models, which we refer to as spatial Bayesian neural networks (SBNNs). An SBNN leverages the representational capacity of a Bayesian neural network; it is tailored to a spatial setting by incorporating a spatial “embedding layer” into the network and, possibly, spatially-varying network parameters. An SBNN is calibrated by matching its finite-dimensional distribution at locations on a fine gridding of space to that of a target process of interest. That process could be easy to simulate from or we may have many realisations from it. We propose several variants of SBNNs, most of which are able to match the finite-dimensional distribution of the target process at the selected grid better than conventional BNNs of similar complexity. We also show that an SBNN can be used to represent a variety of spatial processes often used in practice, such as Gaussian processes, lognormal processes, and max-stable processes. We briefly discuss the tools that could be used to make inference with SBNNs, and we conclude with a discussion of their advantages and limitations.

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来源期刊
Spatial Statistics
Spatial Statistics GEOSCIENCES, MULTIDISCIPLINARY-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
4.00
自引率
21.70%
发文量
89
审稿时长
55 days
期刊介绍: Spatial Statistics publishes articles on the theory and application of spatial and spatio-temporal statistics. It favours manuscripts that present theory generated by new applications, or in which new theory is applied to an important practical case. A purely theoretical study will only rarely be accepted. Pure case studies without methodological development are not acceptable for publication. Spatial statistics concerns the quantitative analysis of spatial and spatio-temporal data, including their statistical dependencies, accuracy and uncertainties. Methodology for spatial statistics is typically found in probability theory, stochastic modelling and mathematical statistics as well as in information science. Spatial statistics is used in mapping, assessing spatial data quality, sampling design optimisation, modelling of dependence structures, and drawing of valid inference from a limited set of spatio-temporal data.
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