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A machine‐learning approach for extending classical wildlife resource selection analyses

机译:扩展经典野生动植物资源选择分析的机器学习方法

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摘要

Resource selection functions (RSFs) are tremendously valuable for ecologists and resource managers because they quantify spatial patterns in resource utilization by wildlife, thereby facilitating identification of critical habitat areas and characterizing specific habitat features that are selected or avoided. RSFs discriminate between known‐use resource units (e.g., telemetry locations) and available (or randomly selected) resource units based on an array of environmental features, and in their standard form are performed using logistic regression. As generalized linear models, standard RSFs have some notable limitations, such as difficulties in accommodating nonlinear (e.g., humped or threshold) relationships and complex interactions. Increasingly, ecologists are using flexible machine‐learning methods (e.g., random forests, neural networks) to overcome these limitations. Herein, we investigate the seasonal resource selection patterns of mule deer (Odocoileus hemionus) by comparing a logistic regression framework with random forest (RF), a popular machine‐learning algorithm. Random forest (RF) models detected nonlinear relationships (e.g., optimal ranges for slope and elevation) and complex interactions which would have been very challenging to discover and characterize using standard model‐based approaches. Compared with standard RSF models, RF models exhibited improved predictive skill, provided novel insights about resource selection patterns of mule deer, and, when projected across a relevant geographic space, manifested notable differences in predicted habitat suitability. We recommend that wildlife researchers harness the strengths of machine‐learning tools like RF in addition to “classical” tools (e.g., mixed‐effects logistic regression) for evaluating resource selection, especially in cases where extensive telemetry data sets are available.
机译:资源选择功能(RSF)对生态学家和资源管理者来说非常有价值,因为它们可以量化野生动植物资源利用中的空间格局,从而有助于识别关键栖息地区域并表征被选择或避免的特定栖息地特征。 RSF根据一系列环境特征区分已知用途的资源单位(例如遥测位置)和可用的(或随机选择的)资源单位,并以标准形式使用逻辑回归执行。作为广义线性模型,标准RSF具有一些显着的局限性,例如难以适应非线性(例如,驼峰或阈值)关系和复杂的相互作用。生态学家越来越多地使用灵活的机器学习方法(例如,随机森林,神经网络)来克服这些限制。在这里,我们通过比较Logistic回归框架与流行的机器学习算法随机森林(RF)来研究m鹿(Odocoileus hemionus)的季节性资源选择模式。随机森林(RF)模型检测到非线性关系(例如,坡度和海拔的最佳范围)和复杂的相互作用,这对于使用基于标准模型的方法来发现和表征将是非常具有挑战性的。与标准RSF模型相比,RF模型显示出提高的预测能力,对ule鹿的资源选择模式提供了新颖的见解,并且当投影到相关地理空间中时,在预测栖息地的适宜性上也表现出显着差异。我们建议野生生物研究人员利用RF之类的机器学习工具以及“经典”工具(例如,混合效应逻辑回归)的优势来评估资源选择,尤其是在拥有大量遥测数据集的情况下。

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