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Hierarchical Bayesian estimation of the population viability of an epixylic moss

机译:贝叶斯苔藓种群生存力的分层贝叶斯估计

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1. Understanding the variation in population abundances requires accounting for the environmental variability and uncertainty on different scales. We developed and evaluated a Bayesian hierarchical model for the inter-annual variation in population abundance of the epixylic bryophyte Buxbaumia viridis. The model accounts for spatio-temporal variability on two spatial scales. We used data on population abundance and on the weather variables at regional level collected between 1996 and 2003, and data on dead wood amount collected between 1996 and 2008. We also provide a Bayesian estimate of the population viability, specifically the population stochastic growth rate (log lambda(S)), which accounts for natural variability and uncertainty. 2. Previous estimates of population viability did not account for uncertainties in a satisfactory way. First, point estimates of log lambda(S) cannot, by definition, express variation. Second, the commonly used approach to estimate log lambda(S) and its confidence interval underestimates uncertainties. The approach aims to estimate the mean of log lambda(S), with the confidence interval representing the uncertainty in the estimate of this mean. The interval does not reflect the natural variation and uncertainty. 3. We estimated a probability distribution of log lambda(S), where the probability distributions of the yearspecific growth rates (log lambda(y)) are accounted for. The species is likely to decline under current environmental conditions. Based on the probability distribution of log lambda(S), we estimated this risk to be 81%. 4. We found support for the hypotheses that the population dynamics are driven by autumn frosts, by spring precipitation and temperature (regional variables), and by the preceding year's population abundance (local variable). 5. Synthesis. Statements about the viability of populations should not be based on point estimates of log lambda(S). Instead, the full probability distribution of log lambda(S) should be used, which explicitly accounts for the hierarchically structured natural variability and uncertainty. This distribution allows estimating the risk for a population decline, or providing an estimate of the confidence in a statement about a decline. This quantitative information can be weighed against other interests. We expect this Bayesian approach to be especially useful in the viability analysis of natural populations experiencing environmental variability.
机译:1.要了解人口数量的变化,就必须考虑环境变化和不同规模的不确定性。我们开发并评估了贝叶斯等级模型,用于表生苔藓植物绿粉虱(Buxbaumia viridis)种群数量的年际变化。该模型考虑了两个空间尺度上的时空变化。我们使用了1996年至2003年之间收集的有关人口丰度和区域性天气变量的数据,以及1996年至2008年收集的有关死木数量的数据。我们还提供了人口生存力的贝叶斯估计,特别是人口随机增长率( log lambda(S)),它说明了自然的可变性和不确定性。 2.先前对人口生存力的估计并不能令人满意地说明不确定性。首先,根据定义,对数lambda(S)的点估计无法表达变化。第二,常用的估计对数λ及其置信区间的方法低估了不确定性。该方法旨在估计对数λ(S)的均值,置信区间表示该均值估计中的不确定性。该间隔不反映自然变化和不确定性。 3.我们估计了log lambda(S)的概率分布,其中考虑了特定年份增长率(log lambda(y))的概率分布。在当前环境条件下,该物种可能会减少。根据log lambda(S)的概率分布,我们估计此风险为81%。 4.我们发现了以下假设的支持:人口动态是由秋季霜冻,春季降水和温度(区域变量)以及前一年的人口丰度(局部变量)驱动的。 5.合成。关于种群生存力的陈述不应基于log lambda(S)的点估计。取而代之的是,应该使用对数lambda(S)的全部概率分布,这明确地说明了层次结构的自然可变性和不确定性。这种分布可以估算人口下降的风险,也可以估算人口下降的信心。可以将这种定量信息与其他利益进行权衡。我们希望这种贝叶斯方法在经历环境多变性的自然种群的生存力分析中特别有用。

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