Bayesian Approaches to Proxy Uncertainty Quantification in Paleoecology: A Mathematical Justification and Practical Integration

IF 1.4 4区 数学 Q3 BIOLOGY
Marco A. Aquino-López, Lysanna Anderson, Joan-Albert Sanchez-Cabeza, Ana Carolina Ruiz-Fernández, J. Andrés Christen
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引用次数: 0

Abstract

Paleoenvironmental data are essential for reconstructing environmental conditions in the distant past, and these reconstructions strongly depend on proxies and age–depth models. Proxies are indirect measurements that substitute for variables that cannot be directly measured, such as past precipitation. Conversely, an age–depth model is a tool that correlates the observed proxy with a specific moment in time. Bayesian age–depth modelling has proved to be a powerful method for estimating sediment ages and their associated uncertainties. However, there remains considerable potential for further integration into proxy analysis. In this paper, we explore a mathematical justification and a computational approach that integrates uncertainty at the age–depth level and propagates it to the proxy scale in the form of a posterior predictive distribution. This method mitigates potential biases and errors by removing the need to assign a single age to a given proxy measurement. It allows for quantifying the likelihood that proxy data values correspond to modelled ages, thus enabling the quantification of uncertainty in both the temporal and proxy value domains. The use of Bayesian statistics in proxy analysis represents a relatively recent advancement. We aim to mathematically justify incorporating the Markov chain Monte Carlo output from age–depth models into proxy analysis and to present a novel methodology for constructing environmental reconstructions using this approach.

Abstract Image

古生态学中代理不确定性量化的贝叶斯方法:数学论证与实践整合
古环境数据对于重建遥远过去的环境条件至关重要,而这些重建工作在很大程度上取决于代用指标和年龄深度模型。代用指标是替代无法直接测量的变量(如过去的降水量)的间接测量。相反,年龄深度模型是将观测到的代用指标与特定时间相关联的工具。事实证明,贝叶斯年龄深度模型是估算沉积物年龄及其相关不确定性的有力方法。然而,将其进一步整合到代用资料分析中仍有相当大的潜力。在本文中,我们探讨了一种数学理由和计算方法,这种方法可以整合年龄-深度层面的不确定性,并以后验预测分布的形式将其传播到代用尺度。这种方法无需为给定的代用测量值分配单一年龄,从而减少了潜在的偏差和误差。它可以量化代用数据值与模拟年龄相对应的可能性,从而量化时间域和代用值域的不确定性。贝叶斯统计法在代用指标分析中的应用是一个相对较新的进展。我们旨在从数学上证明将年龄深度模型的马尔科夫链蒙特卡罗输出结果纳入代用指标分析的合理性,并提出一种利用这种方法构建环境重建的新方法。
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来源期刊
CiteScore
2.70
自引率
7.10%
发文量
38
审稿时长
>12 weeks
期刊介绍: The Journal of Agricultural, Biological and Environmental Statistics (JABES) publishes papers that introduce new statistical methods to solve practical problems in the agricultural sciences, the biological sciences (including biotechnology), and the environmental sciences (including those dealing with natural resources). Papers that apply existing methods in a novel context are also encouraged. Interdisciplinary papers and papers that illustrate the application of new and important statistical methods using real data are strongly encouraged. The journal does not normally publish papers that have a primary focus on human genetics, human health, or medical statistics.
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