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首页> 外文期刊>Methods in Ecology and Evolution >ENMeval: An R package for conducting spatially independent evaluations and estimating optimal model complexity for MAXENT ecological niche models
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ENMeval: An R package for conducting spatially independent evaluations and estimating optimal model complexity for MAXENT ecological niche models

机译:ENMeval:R软件包,用于进行空间独立的评估并估算MAXENT生态位模型的最佳模型复杂度

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摘要

1. Recent studies have demonstrated a need for increased rigour in building and evaluating ecological niche models (ENMs) based on presence-only occurrence data. Two major goals are to balance goodness-of-fit with model complexity (e.g. by tuning' model settings) and to evaluate models with spatially independent data. These issues are especially critical for data sets suffering from sampling bias, and for studies that require transferring models across space or time (e.g. responses to climate change or spread of invasive species). Efficient implementation of procedures to accomplish these goals, however, requires automation. We developed ENMeval, an R package that: (i) creates data sets for k-fold cross-validation using one of several methods for partitioning occurrence data (including options for spatially independent partitions), (ii) builds a series of candidate models using Maxent with a variety of user-defined settings and (iii) provides multiple evaluation metrics to aid in selecting optimal model settings. The six methods for partitioning data are n-1 jackknife, random k-folds ( = bins), user-specified folds and three methods of masked geographically structured folds. ENMeval quantifies six evaluation metrics: the area under the curve of the receiver-operating characteristic plot for test localities (AUC(TEST)), the difference between training and testing AUC (AUC(DIFF)), two different threshold-based omission rates for test localities and the Akaike information criterion corrected for small sample sizes (AICc). We demonstrate ENMeval by tuning model settings for eight tree species of the genus Coccoloba in Puerto Rico based on AICc. Evaluation metrics varied substantially across model settings, and models selected with AICc differed from default ones. In summary, ENMeval facilitates the production of better ENMs and should promote future methodological research on many outstanding issues.
机译:1.最近的研究表明,在基于仅存在的发生数据的情况下,建立和评估生态位模型(ENM)的要求更加严格。两个主要目标是在拟合优度和模型复杂度之间取得平衡(例如通过调整模型设置),并使用空间独立的数据评估模型。这些问题对于遭受采样偏差的数据集以及需要跨时空转移模型的研究(例如对气候变化或入侵物种扩散的响应)尤其重要。但是,要有效地执行程序以实现这些目标,就需要自动化。我们开发了ENMeval,这是一个R包,它可以:(i)使用几种划分出现数据的方法(包括空间独立分区的选项)中的一种,创建用于k倍交叉验证的数据集;(ii)使用Maxent具有各种用户定义的设置,并且(iii)提供了多种评估指标,以帮助选择最佳的模型设置。分割数据的六种方法是n-1折刀,随机k折(= bins),用户指定的折以及三种掩盖地理结构的折的方法。 ENMeval量化了六个评估指标:测试地点的接收机操作特性图曲线下的面积(AUC(TEST)),训练和测试AUC之间的差异(AUC(DIFF)),两种基于阈值的不同遗漏率测试地点和针对小样本量(AICc)校正的Akaike信息标准。我们通过基于AICc调整波多黎各Coccoloba属8种树种的模型设置来演示ENMeval。评估指标因模型设置而有很大差异,并且使用AICc选择的模型与默认模型不同。总而言之,ENMeval促进了更好的ENM的产生,并应促进对许多悬而未决问题的未来方法学研究。

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