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Improving Transferability of Introduced Species’ Distribution Models: New Tools to Forecast the Spread of a Highly Invasive Seaweed

机译:改善引进物种的分布模型的可转移性:预测高度入侵海藻传播的新工具

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摘要

The utility of species distribution models for applications in invasion and global change biology is critically dependent on their transferability between regions or points in time, respectively. We introduce two methods that aim to improve the transferability of presence-only models: density-based occurrence thinning and performance-based predictor selection. We evaluate the effect of these methods along with the impact of the choice of model complexity and geographic background on the transferability of a species distribution model between geographic regions. Our multifactorial experiment focuses on the notorious invasive seaweed Caulerpacylindracea (previously Caulerpa racemosa var. cylindracea ) and uses Maxent, a commonly used presence-only modeling technique. We show that model transferability is markedly improved by appropriate predictor selection, with occurrence thinning, model complexity and background choice having relatively minor effects. The data shows that, if available, occurrence records from the native and invaded regions should be combined as this leads to models with high predictive power while reducing the sensitivity to choices made in the modeling process. The inferred distribution model of Caulerpacylindracea shows the potential for this species to further spread along the coasts of Western Europe, western Africa and the south coast of Australia.
机译:物种分布模型在入侵和全球变化生物学中的应用的效用主要取决于它们在区域或时间点之间的可转移性。我们介绍了两种旨在改善仅存在模型的可传递性的方法:基于密度的事件稀疏和基于性能的预测变量选择。我们评估这些方法的效果以及模型复杂度和地理背景的选择对地理区域之间物种分布模型可传递性的影响。我们的多因素实验着眼于臭名昭著的入侵性海藻Caulerpacylindracea(以前称为Caulerpa racemosa var。cylindracea),并使用了Maxent(一种常用的仅存在建模技术)。我们表明,通过适当的预测变量选择可以显着提高模型的可传递性,其中发生稀疏,模型复杂度和背景选择的影响相对较小。数据表明,如果可以的话,应该合并来自本地和入侵区域的发生记录,因为这将导致具有高预测能力的模型,同时降低对建模过程中所做选择的敏感性。 Caulerpa cylindracea 的推断分布模型表明,该物种在西欧,西非和澳大利亚南海岸的沿岸进一步传播的潜力。

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