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首页> 外文期刊>The American Naturalist: Devoted to the Conceptual Unification of the Biological Sciences >Can Community Structure Causally Determine Dynamics of Constituent Species? A Test Using a Host-Parasite Community
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Can Community Structure Causally Determine Dynamics of Constituent Species? A Test Using a Host-Parasite Community

机译:社区结构可以因果关系确定组成种的动态吗? 使用宿主寄生虫社区进行测试

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摘要

Structures of communities have been widely studied with the assumption that they not only are a useful bookkeeping tool but also can causally influence dynamics of the populations from which they emerge. However, convincing tests of this assumption have remained elusive because generally the only way to alter a community property is by manipulating its constituent populations, thereby preventing independent measurements of effects on those populations. There is a growing body of evidence that methods like convergent cross-mapping (CCM) can be used to make inferences about causal interactions using state space reconstructions of coupled time series, a method that relies on only observational data. Here we show that CCM can be used to test the causal effects of community properties using a well-studied Slovakian rodent-ectoparasite community. CCM identified causal drivers across the organizational scales of this community, including evidence that host dynamics were influenced by the degree to which the community at large was connected and clustered. Our findings add to the growing literature on the importance of community structures in disease dynamics and argue for a broader use of causal inference in the analysis of community dynamics.
机译:通过假设它们不仅是一个有用的簿记工具,还广泛研究了社区的结构,而且可以因果关系地影响他们出现的人群的动态。然而,这种假设的令人信服的测试仍然难以捉摸,因为通常通过操纵其构成群体来改变社区财产的唯一方法,从而防止对这些人群的影响进行独立测量。存在越来越多的证据,即收敛交叉映射(CCM)等方法可用于使用耦合时间序列的状态空间重建的因果交互,这是依赖于观察数据的方法。在这里,我们表明,CCM可用于使用学习的斯洛伐克啮齿动物 - 异位肽群落来测试社区性质的因果效应。 CCM确定了该社区组织尺度的因果司机,包括宿主动态受到在大型社区所连接和集群的程度的影响的证据。我们的调查结果为疾病动态社区结构的重要性越来越多的文献,并争论在群落动态分析中更广泛地使用因果推断。

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