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Analyzing mixing systems using a new generation of Bayesian tracer mixing models

机译:使用新一代贝叶斯示踪剂混合模型分析混合系统

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摘要

The ongoing evolution of tracer mixing models has resulted in a confusing array of software tools that differ in terms of data inputs, model assumptions, and associated analytic products. Here we introduce MixSIAR, an inclusive, rich, and flexible Bayesian tracer (e.g., stable isotope) mixing model framework implemented as an open-source R package. Using MixSIAR as a foundation, we provide guidance for the implementation of mixing model analyses. We begin by outlining the practical differences between mixture data error structure formulations and relate these error structures to common mixing model study designs in ecology. Because Bayesian mixing models afford the option to specify informative priors on source proportion contributions, we outline methods for establishing prior distributions and discuss the influence of prior specification on model outputs. We also discuss the options available for source data inputs (raw data versus summary statistics) and provide guidance for combining sources. We then describe a key advantage of MixSIAR over previous mixing model software—the ability to include fixed and random effects as covariates explaining variability in mixture proportions and calculate relative support for multiple models via information criteria. We present a case study of Alligator mississippiensis diet partitioning to demonstrate the power of this approach. Finally, we conclude with a discussion of limitations to mixing model applications. Through MixSIAR, we have consolidated the disparate array of mixing model tools into a single platform, diversified the set of available parameterizations, and provided developers a platform upon which to continue improving mixing model analyses in the future.
机译:示踪剂混合模型的不断发展导致了一系列混乱的软件工具,这些工具在数据输入,模型假设和相关的分析产品方面有所不同。在这里,我们介绍MixSIAR,这是一个包含在内的,丰富且灵活的贝叶斯示踪剂(例如稳定同位素)混合模型框架,已实现为开源R包。以MixSIAR为基础,我们为混合模型分析的实施提供指导。我们首先概述混合物数据误差结构公式之间的实际差异,并将这些误差结构与生态学中常见的混合模型研究设计联系起来。因为贝叶斯混合模型提供了指定源比例贡献的先验信息的选项,所以我们概述了建立先验分布的方法,并讨论了先验规范对模型输出的影响。我们还将讨论可用于源数据输入(原始数据与摘要统计数据)的选项,并为组合源提供指导。然后,我们将描述MixSIAR相对于以前的混合模型软件的主要优势-能够将固定和随机效应作为协变量来解释混合物比例的变化,并通过信息标准为多个模型计算相对支持。我们目前对鳄鱼密西西比饮食分配进行案例研究,以证明这种方法的力量。最后,我们讨论混合模型应用程序的局限性。通过MixSIAR,我们将各种混合模型工具整合到一个平台中,多样化了可用的参数化设置,并为开发人员提供了一个平台,可以在此平台上继续改进未来的混合模型分析。

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