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An exhaustive analysis of heuristic methods for variable selection in ecological niche modeling and species distribution modeling

机译:生态利基建模与物种分布建模的变量选择的启发式方法的详尽分析

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Ecological niche models and species distribution models are used in many fields of science. Despite their popularity, only recently have important aspects of the modeling process like model selection been developed. Choosing environmental variables with which to create these models is another critical part of the process, but methods currently in use are not consistent in their results and no comprehensive approach exists by which to perform this step. Here, we compared seven heuristic methods of variable selection against a novel approach that proposes to select best sets of variables by evaluating performance of models created with all combinations of variables and distinct parameter settings of the algorithm in concert. Our results were that-except for the jackknife method for one of the 12 species and fluctuation index for two of the 12 species-none of the heuristic methods for variable selection coincided with the exhaustive one. Performance decreased in models created using variables selected with heuristic methods and both underfitting and overfitting were detected when comparing their geographic projections with the ones of models created with variables selected with the exhaustive method. Using the exhaustive approach could be time consuming, so a two-step exercise may be necessary. However, using this method identifies adequate variable sets and parameter settings in concert that are associated with increased model performance.
机译:生态利基模型和物种分布模型用于许多科学领域。尽管他们受欢迎,但最近仅开发了模型选择的建模过程的重要方面。选择要创建这些模型的环境变量是该过程的另一个关键部分,但目前在使用中的方法在其结果中并不一致,并且不存在综合方法来执行此步骤。在这里,我们将七种可变选择的启发式方法与一种新的方法进行了提议,通过评估使用各种变量和算法的不同参数设置创建的模型的性能来选择最佳变量集。我们的结果是 - 除了12种的12种和波动指数之一外,除了12种中的两个物种之一的方法 - 没有用于可变选择的启发式方法与穷举有关。在使用具有启发式方法和底部的地理投影的模型中,在使用用穷举方法选择的变量创建的模型的模型进行比较时,检测到使用带有启发式方法的变量和底部的模型产生的性能下降。使用详尽的方法可能是耗时的,因此可能需要两步锻炼。但是,使用此方法识别与模型性能提高相关的音乐会的足够变量集和参数设置。

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