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首页> 外文期刊>Methods in Ecology and Evolution >Inferring community assembly processes from macroscopic patterns using dynamic eco-evolutionary models and Approximate Bayesian Computation (ABC)
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Inferring community assembly processes from macroscopic patterns using dynamic eco-evolutionary models and Approximate Bayesian Computation (ABC)

机译:使用动态生态进化模型和近似贝叶斯计算(ABC)从宏观模式推断社区组装过程

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Statistical techniques exist for inferring community assembly processes from community patterns. Habitat filtering, competition, and biogeographical effects have, for example, been inferred from signals in phenotypic and phylogenetic data. The usefulness of current inference techniques is, however, debated as a mechanistic and causal link between process and pattern is often lacking, and evolutionary processes and trophic interactions are ignored. Here, we revisit the current knowledge on community assembly across scales and, in line with several reviews that have outlined challenges associated with current inference techniques, we identify a discrepancy between the current paradigm of eco-evolutionary community assembly and current inference techniques that focus mainly on competition and habitat filtering. We argue that trait-based dynamic eco-evolutionary models in combination with recently developed model fitting and model evaluation techniques can provide avenues for more accurate, reliable, and inclusive inference. To exemplify, we implement a trait-based, spatially explicit eco-evolutionary model and discuss steps of model modification, fitting, and evaluation as an iterative approach enabling inference from diverse data sources. Through a case study on inference of prey and predator niche width in an eco-evolutionary context, we demonstrate how inclusive and mechanistic approaches-eco-evolutionary modelling and Approximate Bayesian Computation (ABC)-can enable inference of assembly processes that have been largely neglected by traditional techniques despite the ubiquity of such processes. Much literature points to the limitations of current inference techniques, but concrete solutions to such limitations are few. Many of the challenges associated with novel inference techniques are, however, already to some extent resolved in other fields and thus ready to be put into action in a more formal way for inferring processes of community assembly from signals in various data sources.
机译:存在用于从社区模式推断社区组装过程的统计技术。例如,从表型和系统发育数据中的信号推断出栖息地过滤,竞争和生物地图效应。然而,当前推理技术的有用性是作为过程和模式之间的机械和因果关系,通常缺乏,忽略进化过程和营养互动。在这里,我们重新审视了跨越规模的当前关于社区组装的知识,并符合概述了与当前推理技术相关的挑战的审查,我们确定了生态进化社区组装和主要推理技术的当前范式之间的差异,主要关注论竞争与栖息地过滤。我们认为,基于特质的动态生态进化模型与最近开发的模型拟合和型号评估技术相结合,可以为更准确,可靠和包容性推断提供途径。为了举例说明,我们实现了一种基于特征的空间显式的生态演进模型,并讨论模型修改,拟合和评估的步骤,作为实现不同数据源的推断的迭代方法。通过对生态进化背景下的猎物和捕食者利基宽度推理的案例研究,我们展示了如何包容和机械方法 - 生态进化建模和近似贝叶斯计算(ABC)-CAN使得大量被忽视的装配过程推理通过传统技术,尽管这些过程的无处不在。很多文学指向电流推理技术的局限性,但这种限制的具体解决方案很少。然而,与小说推理技术相关的许多挑战已经在某种程度上在某种程度上在其他领域中解析,从而准备以更正式的方式投入行动,以便在各种数据源中的信号中推断社区组件的过程。

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