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The challenge of modeling niches and distributions for data-poor species: a comprehensive approach to model complexity

机译:数据差异种类和分布模型的挑战:一种模拟复杂性的综合方法

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Models of species ecological niches and geographic distributions now represent a widely used tool in ecology, evolution, and biogeography. However, the very common situation of species with few available occurrence localities presents major challenges for such modeling techniques, in particular regarding model complexity and evaluation. Here, we summarize the state of the field regarding these issues and provide a worked example using the technique Maxent for a small mammal endemic to Madagascar (the nesomyine rodent Eliurus majori). Two relevant model-selection approaches exist in the literature (information criteria, specifically AICc; and performance predicting withheld data, via a jackknife), but AICc is not strictly applicable to machine-learning algorithms like Maxent. We compare models chosen under each selection approach with those corresponding to Maxent default settings, both with and without spatial filtering of occurrence records to reduce the effects of sampling bias. Both selection approaches chose simpler models than those made using default settings. Furthermore, the approaches converged on a similar answer when sampling bias was taken into account, but differed markedly with the unfiltered occurrence data. Specifically, for that dataset, the models selected by AICc had substantially fewer parameters than those identified by performance on withheld data. Based on our knowledge of the study species, models chosen under both AICc and withheld-data-selection showed higher ecological plausibility when combined with spatial filtering. The results for this species intimate that AICc may consistently select models with fewer parameters and be more robust to sampling bias. To test these hypotheses and reach general conclusions, comprehensive research should be undertaken with a wide variety of real and simulated species. Meanwhile, we recommend that researchers assess the critical yet underappreciated issue of model complexity both via information criteria a
机译:物种生态利基和地理分布的模型现在代表了生态,进化和生物地理中的广泛使用的工具。然而,具有少数可用事件的物种的常见情况呈现出这种建模技术的主要挑战,特别是关于模型复杂性和评估。在这里,我们总结了关于这些问题的领域的状态,并提供了使用Maxent Maxent的技术实例为Madagascar(Nesomyine啮齿动物Eliurus Majori)。文献中存在两个相关的模型选择方法(信息标准,特别是AICC;通过千刀预测扣除数据的性能,但AICC并不严格适用于MaxEnt等机器学习算法。我们将在每个选择方法下选择的模型与对应于MaxEnt默认设置的那些,两者都有和没有出现的空间过滤,以减少采样偏置的效果。两种选择方法都选择更简单的型号,而不是使用默认设置制作的型号。此外,当考虑采样偏差时,该方法会融合在类似的答案中,但是未经过滤的发生数据显着明显不同。具体而言,对于该数据集,AICC选择的模型具有比通过性能识别的参数大大较少。基于我们对研究种类的了解,在AICC和隐藏数据选择下选择的模型在与空间过滤结合时,在与空间过滤结合时表现出更高的生态合理性。这种物种的结果迫切地认为AICC可以一致地选择具有更少参数的模型,并且对采样偏置更加坚固。为了测试这些假设并达到一般的结论,应以各种实际和模拟物种进行综合研究。与此同时,我们建议研究人员通过信息标准A评估模型复杂性的批判性尚未遵循的问题

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