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On the usefulness of prediction intervals for local species distribution model forecasts

机译:关于当地物种分布模型预测预测间隔的有用性

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摘要

The maps produced by species distribution models (SDMs) are increasingly used by decision-makers for supporting local and regional land-use as well as landscape planning issues. While ecologists generally are interested in large-scale patterns and the overall quality of SDMs, decision-makers and conservationists focus on the reliability of localized predictions relevant for specific projects. Here, we use the machine learning methods Random Forest and Quantile Regression Forest to predict local abundance of the black-tailed godwit Limosa limosa with prediction intervals, a measure of the probability that a future observation will lie between certain limits. Although the confidence intervals for local predictions are very narrow, the corresponding prediction intervals are very wide. Therefore, the actual numbers of the black-tailed godwit expected at a given point in the field may vary from virtually absent to high density. We conclude that practitioners should lower their expectations of maps based on the currently available SDMs and to be careful when utilizing them for supporting local management decisions.
机译:由物种分配模型(SDMS)产生的地图越来越多地由决策者使用,以支持当地和区域土地使用以及景观计划问题。虽然生态学家通常对大规模模式和SDMS的整体质量感兴趣,但决策者和保护主义者的重点是对特定项目相关的本地化预测的可靠性。在这里,我们使用机器学习方法随机森林和量子回归森林来预测局部丰富的黑尾神纱利马拉·利姆索萨利用预测间隔,衡量未来观察的概率将在某些限制之间呈现。尽管局部预测的置信区间非常窄,但相应的预测间隔非常宽。因此,在现场给定点的预期的黑尾神道的实际数量可能因几乎不存在高密度而变化。我们得出结论,从业人员应根据当前可用的SDMS降低地图的期望,并在利用它们支持地方管理决策时要小心。

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