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Evaluating the predictive performance of habitat models developed using logistic regression

机译:评估使用Logistic回归开发的栖息地模型的预测性能

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摘要

The use of statistical models to predict the likely occurrence or distribution of species is becoming an increasingly important tool in conservation planning and wildlife management. Evaluating the predictive performance of models using independent data is a vital step in model development. Such evaluation assists in determining the suitability of a model for specific applications, facilitates comparative assessment of competing models and modelling techniques, and identities aspects of a model most in need of improvement. The predictive performance of habitat models developed using logistic regression needs to be evaluated in terms of two components: reliability or calibration (the agreement between predicted probabilities of occurrence and observed proportions of sites occupied), and discrimination capacity (the ability of a model to correctly distinguish between occupied and unoccupied sites). Lack of reliability can be attributed to two systematic sources, calibration bias and spread. Techniques are described for evaluating both of these sources of error. The discrimination capacity of logistic regression models is often measured by cross-classifying observations and predictions in a two-by-two table, and calculating indices of classification performance. However, this approach relies on the essentially arbitrary choice of a threshold probability to determine whether or not a site is predicted to be occupied. An alternative approach is described which measures discrimination capacity in terms of the area under a relative operating characteristic (ROC) curve relating relative proportions of correctly and incorrectly classified predictions over a wide and continuous range of threshold levels. Wider application of the techniques promoted in this paper could greatly improve understanding of the usefulness, and potential limitations, of habitat models developed for use in conservation planning and wildlife management. (C) 2000 Elsevier Science B.V. All rights reserved. [References: 41]
机译:使用统计模型预测物种的可能发生或分布正在成为保护规划和野生动植物管理中越来越重要的工具。使用独立数据评估模型的预测性能是模型开发中至关重要的一步。这种评估有助于确定模型对特定应用的适用性,有助于对竞争模型和建模技术进行比较评估,以及最需要改进的模型的标识方面。使用逻辑回归开发的栖息地模型的预测性能需要从两个方面进行评估:可靠性或校准(预测的发生概率与观测到的占位比例之间的一致性)和判别能力(模型正确识别的能力)区分占用和未占用的站点)。缺乏可靠性可归因于两个系统来源,即校准偏差和扩散。描述了用于评估这两种错误源的技术。 Logistic回归模型的判别能力通常是通过在两两表中对观察和预测进行交叉分类并计算分类性能指标来衡量的。但是,该方法依赖于阈值概率的基本任意选择,以确定是否预测某个站点被占用。描述了一种替代方法,该方法根据相对工作特征(ROC)曲线下的面积来衡量辨别能力,该特征与在阈值水平的较大范围和连续范围内正确分类和错误分类的预测的相对比例相关。本文提倡的技术的更广泛应用可以极大地增进人们对为保护规划和野生动植物管理而开发的生境模型的有用性和潜在局限性的理解。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:41]

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