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首页> 外文期刊>BMC Ecology >Population distribution models: species distributions are better modeled using biologically relevant data partitions
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Population distribution models: species distributions are better modeled using biologically relevant data partitions

机译:人口分布模型:使用生物学相关的数据分区可以更好地模拟物种分布

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Background Predicting the geographic distribution of widespread species through modeling is problematic for several reasons including high rates of omission errors. One potential source of error for modeling widespread species is that subspecies and/or races of species are frequently pooled for analyses, which may mask biologically relevant spatial variation within the distribution of a single widespread species. We contrast a presence-only maximum entropy model for the widely distributed oldfield mouse (Peromyscus polionotus) that includes all available presence locations for this species, with two composite maximum entropy models. The composite models either subdivided the total species distribution into four geographic quadrants or by fifteen subspecies to capture spatially relevant variation in P. polionotus distributions. Results Despite high Area Under the ROC Curve (AUC) values for all models, the composite species distribution model of P. polionotus generated from individual subspecies models represented the known distribution of the species much better than did the models produced by partitioning data into geographic quadrants or modeling the whole species as a single unit. Conclusions Because the AUC values failed to describe the differences in the predictability of the three modeling strategies, we suggest using omission curves in addition to AUC values to assess model performance. Dividing the data of a widespread species into biologically relevant partitions greatly increased the performance of our distribution model; therefore, this approach may prove to be quite practical and informative for a wide range of modeling applications.
机译:背景技术通过建模来预测广泛物种的地理分布是有问题的,原因有很多,包括遗漏错误率很高。对广泛分布的物种进行建模的一种潜在的错误来源是,通常会汇集物种的亚种和/或种族进行分析,这可能掩盖了单个广泛分布物种的分布内生物学相关的空间变化。我们对比了广泛分布的旧田鼠(Peromyscus polionotus)的仅存在最大熵模型,该模型包括该物种的所有可用存在位置以及两个复合的最大熵模型。复合模型将总的物种分布细分为四个地理象限,或者按十五个亚种来捕获空间分布的脊灰对虾分布。结果尽管所有模型的ROC曲线(AUC)值均具有较高的面积,但由单个亚种模型生成的脊灰假单胞菌的复合物种分布模型仍比通过将数据划分为地理象限所产生的模型更好地表示了该物种的已知分布或将整个物种建模为一个单元。结论由于AUC值无法描述三种建模策略的可预测性差异,因此我们建议使用除AUC值以外的遗漏曲线来评估模型性能。将广泛物种的数据划分为生物学相关的分区大大提高了我们的分布模型的性能;因此,对于许多建模应用程序,该方法可能被证明是非常实用和有益的。

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