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Improving estimates of environmental change using multilevel regression models of Ellenberg indicator values

机译:使用Ellenberg指标值的多级回归模型改善环境变化的估算

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摘要

Ellenberg indicator values (EIVs) are a widely used metric in plant ecology comprising a semi‐quantitative description of species’ ecological requirements. Typically, point estimates of mean EIV scores are compared over space or time to infer differences in the environmental conditions structuring plant communities—particularly in resurvey studies where no historical environmental data are available. However, the use of point estimates as a basis for inference does not take into account variance among species EIVs within sampled plots and gives equal weighting to means calculated from plots with differing numbers of species. Traditional methods are also vulnerable to inaccurate estimates where only incomplete species lists are available.We present a set of multilevel (hierarchical) models—fitted with and without group‐level predictors (e.g., habitat type)—to improve precision and accuracy of plot mean EIV scores and to provide more reliable inference on changing environmental conditions over spatial and temporal gradients in resurvey studies. We compare multilevel model performance to GLMMs fitted to point estimates of mean EIVs. We also test the reliability of this method to improve inferences with incomplete species lists in some or all sample plots. Hierarchical modeling led to more accurate and precise estimates of plot‐level differences in mean EIV scores between time‐periods, particularly for datasets with incomplete records of species occurrence. Furthermore, hierarchical models revealed directional environmental change within ecological habitat types, which less precise estimates from GLMMs of raw mean EIVs were inadequate to detect. The ability to compute separate residual variance and adjusted R 2 parameters for plot mean EIVs and temporal differences in plot mean EIVs in multilevel models also allowed us to uncover a prominent role of hydrological differences as a driver of community compositional change in our case study, which traditional use of EIVs would fail to reveal. Assessing environmental change underlying ecological communities is a vital issue in the face of accelerating anthropogenic change. We have demonstrated that multilevel modeling of EIVs allows for a nuanced estimation of such from plant assemblage data changes at local scales and beyond, leading to a better understanding of temporal dynamics of ecosystems. Further, the ability of these methods to perform well with missing data should increase the total set of historical data which can be used to this end.
机译:Ellenberg指标值(EIV)是植物生态学中广泛使用的指标,包括对物种生态需求的半定量描述。通常,将平均EIV得分的点估计值随时间或空间进行比较,以推断构成植物群落的环境条件的差异,尤其是在没有历史环境数据的调查研究中。但是,使用点估计作为推论的基础并没有考虑采样地块内物种EIV之间的差异,而是对从具有不同物种数的地块计算出的均值给予相等的权重。在只有不完整物种清单的情况下,传统方法也容易受到不准确估计的影响。我们提出了一套多层次(分层)模型,该模型适用于和不具有群体级预测因子(例如,栖息地类型),以提高样地平均值的准确性和准确性。 EIV得分,以便在调查研究中就时空梯度变化的环境条件提供更可靠的推断。我们将多层模型的性能与GLMM进行拟合,以拟合平均EIV的点估计。我们还测试了该方法的可靠性,以改进某些或所有样本图中不完整物种列表的推论。分层建模可以更准确地估计时间段之间的平均EIV得分的地块级差异,尤其是对于物种发生记录不完整的数据集。此外,分层模型揭示了生态栖息地类型内的方向性环境变化,而根据原始平均EIV的GLMM进行的较不精确估计不足以检测。在多水平模型中,能够计算出单独的残差方差和调整后的图均值EIV的R 2 参数以及图均值EIV的时间差异,这也使我们能够发现水文差异作为社区组成驱动因素的重要作用案例研究的变化,传统的EIV使用将无法揭示。面对加速的人为变化,评估潜在生态社区的环境变化是至关重要的问题。我们已经证明,对EIV进行多级建模可以对本地和更大范围内植物组合数据的变化进行细微的估算,从而可以更好地理解生态系统的时间动态。此外,这些方法在丢失数据的情况下表现良好的能力应会增加可用于此目的的历史数据集。

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