Am Nat. 2021 Apr;197(4):415-433. doi: 10.1086/713082. Epub 2021 Mar 4.
AbstractDirect species interactions are commonly included in individual fitness models used for coexistence and local diversity modeling. Though widely considered important for such models, direct interactions alone are often insufficient for accurately predicting fitness, coexistence, or diversity outcomes. Incorporating higher-order interactions (HOIs) can lead to more accurate individual fitness models but also adds many model terms, which can quickly result in model overfitting. We explore approaches for balancing the trade-off between tractability and model accuracy that occurs when HOIs are added to individual fitness models. To do this, we compare models parameterized with data from annual plant communities in Australia and Spain, varying in the extent of information included about the focal and neighbor species. The best-performing models for both data sets were those that grouped neighbors based on origin status and life form, a grouping approach that reduced the number of model parameters substantially while retaining important ecological information about direct interactions and HOIs. Results suggest that the specific identity of focal or neighbor species is not necessary for building well-performing fitness models that include HOIs. In fact, grouping neighbors by even basic functional information seems sufficient to maximize model accuracy, an important outcome for the practical use of HOI-inclusive fitness models.
个体适合度模型常用于共存和局部多样性建模,其中通常包括直接的物种相互作用。尽管直接相互作用被广泛认为对这些模型很重要,但仅直接相互作用往往不足以准确预测适合度、共存或多样性结果。纳入高阶相互作用(HOI)可以使个体适合度模型更准确,但也会增加许多模型项,这可能导致模型过度拟合。我们探讨了在向个体适合度模型中添加高阶相互作用时,如何在可处理性和模型准确性之间取得平衡。为此,我们比较了用来自澳大利亚和西班牙的一年生植物群落数据参数化的模型,这些模型在焦点种和邻种信息的包含程度上有所不同。对于这两个数据集,表现最好的模型是那些根据起源状态和生活型对邻居进行分组的模型,这种分组方法大大减少了模型参数的数量,同时保留了关于直接相互作用和高阶相互作用的重要生态信息。结果表明,对于包含高阶相互作用的适合度模型,建立性能良好的模型并不需要焦点种或邻种的具体身份。事实上,仅根据基本功能信息对邻居进行分组似乎足以最大限度地提高模型准确性,这是高阶相互作用包含的适合度模型实际应用的一个重要结果。