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Quantifying demographic uncertainty: Bayesian methods for integral projection models

机译:量化人口不确定性:整体投影模型的贝叶斯方法

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Integral projection models (IPMs) are a powerful and popular approach to modeling population dynamics. Generalized linear models form the statistical backbone of an IPM. These models are typically fit using a frequentist approach. We suggest that hierarchical Bayesian statistical approaches offer important advantages over frequentist methods for building and interpreting IPMs, especially given the hierarchical nature of most demographic studies. Using a stochastic IPM for a desert cactus based on a 10-year study as a worked example, we highlight the application of a Bayesian approach for translating uncertainty in the vital rates (e.g., growth, survival, fertility) to uncertainty in population-level quantities derived from them (e.g., population growth rate). The best fit demographic model, which would have been difficult to fit under a frequentist framework, allowed for spatial and temporal variation in vital rates and correlated responses to temporal variation across vital rates. The corresponding posterior probability distribution for the stochastic population growth rate (lambda(S)) indicated that, if current vital rates continue, the study population will decline with nearly 100% probability. Interestingly, less supported candidate models that did not include spatial variance and vital rate correlations gave similar estimates of lambda(S). This occurred because the best fitting model did a much better job of fitting vital rates to which the population growth rate was weakly sensitive. The cactus case study highlights several advantages of Bayesian approaches to IPM modeling, including that they: (1) provide a natural fit to demographic data, which are often collected in a hierarchical fashion (e.g., with random variance corresponding to temporal and spatial heterogeneity); (2) seamlessly combine multiple data sets or experiments; (3) readily incorporate covariance between vital rates; and, (4) easily integrate prior information, which may be particularly important for species of conservation concern where data availability may be limited. However, constructing a Bayesian IPM will often require the custom development of a statistical model tailored to the peculiarities of the sampling design and species considered; there may be circumstances under which simpler methods are adequate. Overall, Bayesian approaches provide a statistically sound way to get more information out of hard-won data, the goal of most demographic research endeavors.
机译:整体投影模型(IPM)是一种强大的流行建模人口动态的方法。广义线性模型形成了IPM的统计主干。这些模型通常使用惯常方法进行拟合。我们建议,相对于建立和解释IPM的常用方法,贝叶斯统计方法具有重要的优势,特别是考虑到大多数人口统计学研究的层次性。使用基于10年研究的沙漠仙人掌的随机IPM作为工作示例,我们强调了贝叶斯方法的应用,该方法将生命率的不确定性(例如,生长,生存,生育力)转化为人口水平的不确定性从中得出的数量(例如人口增长率)。最合适的人口统计学模型在一个常客制框架下将很难适应,它允许生命率的时空变化以及对生命率跨时间变化的相关响应。随机人口增长率(lambda(S))的相应后验概率分布表明,如果当前的生命率持续下去,则研究人口将以近100%的概率下降。有趣的是,较少支持的不包含空间方差和生命率相关性的候选模型给出了类似的lambda(S)估计值。发生这种情况的原因是,最佳拟合模型在拟合人口增长率对敏感性较弱的生命率方面做得更好。仙人掌案例研究突出了IPM建模的贝叶斯方法的几个优点,包括:(1)对人口数据提供自然拟合,这些数据通常以分层方式收集(例如,与时间和空间异质性相对应的随机方差) ; (2)无缝组合多个数据集或实验; (3)容易在生命率之间纳入协方差; (4)轻松整合先验信息,这对于数据可用性可能受到限制的物种保护尤为重要。但是,构建贝叶斯IPM通常需要定制开发针对抽样设计和所考虑物种的特殊性的统计模型。在某些情况下,更简单的方法已足够。总体而言,贝叶斯方法提供了一种统计上合理的方法,可以从来之不易的数据中获取更多信息,这是大多数人口统计学研究的目标。

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