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Relative accuracy of spatial predictive models for lynx Lynx canadensis derived using logistic regression-AIC, multiple criteria evaluation and Bayesian approaches

机译:使用逻辑回归AIC,多准则评估和贝叶斯方法得出的山猫天猫座空间预测模型的相对准确性

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摘要

We compared probability surfaces derived using one set of environmental variables in three Geographic Information Systems (GIS) -based approaches: logistic regression and Akaike's Information Criterion (AIC),Multiple Criteria Evaluation (MCE),and Bayesian Analysis (specifically Dempster-Shafer theory). We used lynx Lynx canadensis as our focal species,and developed our environment relationship model using track data collected in Banff National Park,Alberta,Canada,during winters from 1997 to 2000. The accuracy of the three spatial models were compared using a contingency table method. We determined the percentage of cases in which both presence and absence points were correctly classified (overall accuracy),the failure to predict a species where it occurred (omission error) and the prediction of presence where there was absence (commission error). Our overall accuracy showed the logistic regression approach was the most accurate (74.51% ). The multiple criteria evaluation was intermediate (39.22%),while the Dempster-Shafer (D-S) theory model was the poorest (29.90%). However,omission and commission error tell us a different story: logistic regression had the lowest commission error,while D-S theory produced the lowest omission error. Our results provide evidence that habitat modellers should evaluate all three error measures when ascribing confidence in their model. We suggest that for our study area at least,the logistic regression model is optimal. However,where sample size is small or the species is very rare,it may also be useful to explore and/or use a more ecologically cautious modelling approach (e.g. Dempster-Shafer) that would over-predict,protect more sites,and thereby minimize the risk of missing critical habitat in conservation plans.
机译:我们在三种基于地理信息系统(GIS)的方法中比较了使用一组环境变量得出的概率面:逻辑回归和Akaike信息准则(AIC),多准则评估(MCE)和贝叶斯分析(特别是Dempster-Shafer理论) 。我们以山猫(Lynx Lynx canadensis)为重点物种,并利用1997年至2000年冬季在加拿大艾伯塔省班夫国家公园收集的跟踪数据开发了我们的环境关系模型。使用列联表法比较了三个空间模型的准确性。我们确定了正确分类存在和不存在点的情况(总体准确性),无法预测出现该物种的物种的百分比(遗漏误差)和存在不存在的一种预测的百分比(佣金误差)的百分比。我们的整体准确性表明,逻辑回归方法最为准确(74.51%)。多标准评估为中等(39.22%),而Dempster-Shafer(D-S)理论模型最差(29.90%)。但是,遗漏和佣金误差却告诉我们一个不同的故事:逻辑回归的佣金误差最低,而D-S理论产生的遗漏误差最低。我们的结果提供了证据,表明栖息地建模者在对模型的可信度进行评估时应评估所有三个误差度量。我们建议至少对于我们的研究领域,逻辑回归模型是最佳的。但是,在样本量很小或物种非常稀少的地方,探索和/或使用更加生态谨慎的建模方法(例如Dempster-Shafer)也可能会有用,该方法会过度预测,保护更多站点并因此将其最小化保护计划中缺少重要栖息地的风险。

著录项

  • 来源
    《动物学报(英文版)》 |2009年第1期|28-40|共13页
  • 作者单位

    Center for Spatial Analysis,School of Geography and Earth Sciences,McMaster University,Hamilton,ON,Canada L8S 4K1;

    Department of Geography,University of Calgary,Calgary,AB,Canada T2N 1N4;

  • 收录信息 北京大学中文核心期刊目录(北大核心);中国科学引文数据库(CSCD);中国科技论文与引文数据库(CSTPCD);
  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 动物学;
  • 关键词

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