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首页> 外文期刊>Ecological Modelling >Sensitivity of species-distribution models to error, bias, and model design: An application to resource selection functions for woodland caribou
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Sensitivity of species-distribution models to error, bias, and model design: An application to resource selection functions for woodland caribou

机译:物种分布模型对误差,偏差和模型设计的敏感性:林地驯鹿资源选择功能的应用

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摘要

Models that predict distribution are now widely used to understand the patterns and processes of plant and animal occurrence as well as to guide conservation and management of rare or threatened species. Application of these methods has led to corresponding studies evaluating the sensitivity of model performance to requisite data and other factors that may lead to imprecise or false inferences. We expand upon these works by providing a relative measure of the sensitivity of model parameters and prediction to common sources of error, bias, and variability. We used a one-at-a-time sample design and GPS location data for woodland caribou (Rangifer tarandus caribou) to assess one common species-distribution model: a resource selection function. Our measures of sensitivity included change in coefficient values, prediction success, and the area of mapped habitats following the systematic introduction of geographic error and bias in occurrence data, thematic misclassification of resource maps, and variation in model design. Results suggested that error, bias and model variation have a large impact on the direct interpretation of coefficients. Prediction success and definition of important habitats were less responsive to the perturbations we introduced to the baseline model. Model coefficients, prediction success, and area of ranked habitats were most sensitive to positional error in species locations followed by sampling bias, misclassification of resources, and variation in model design. We recommend that researchers report, and practitioners consider, levels of error and bias introduced to predictive species-distribution models. Formal sensitivity and uncertainty analyses are the most effective means for evaluating and focusing improvements on input data and considering the range of values possible from imperfect models. (C) 2007 Elsevier B.V. All rights reserved.
机译:如今,预测分布的模型被广泛用于理解动植物发生的模式和过程,并指导稀有或受威胁物种的保护和管理。这些方法的应用导致相应的研究评估了模型性能对必要数据和其他可能导致不准确或错误推断的因素的敏感性。我们通过提供模型参数的敏感性和对常见误差,偏差和变异性的预测的相对度量来扩展这些工作。我们使用了一次抽样设计和林地驯鹿(Rangifer tarandus驯鹿)的GPS位置数据来评估一种常见的物种分布模型:一种资源选择功能。我们的敏感性度量包括系数值的变化,预测成功以及在发生数据中地理误差和偏差的系统性引入,资源图的主题错误分类以及模型设计的变化之后系统绘制的栖息地面积。结果表明,误差,偏差和模型变化对系数的直接解释影响很大。预测成功和重要生境的定义对我们引入基准模型的扰动反应较慢。模型系数,预测成功率和排名栖息地的面积对物种位置的位置误差最敏感,其次是采样偏差,资源分类错误和模型设计的变化。我们建议研究人员报告,并从业人员考虑,引入预测性物种分布模型的错误和偏见程度。形式敏感性和不确定性分析是评估和集中改进输入数据并考虑来自不完善模型的可能值范围的最有效方法。 (C)2007 Elsevier B.V.保留所有权利。

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