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首页> 外文期刊>The Journal of Applied Ecology >Assessing the accuracy of species distribution models: prevalence, kappa and the true skill statistic (TSS)
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Assessing the accuracy of species distribution models: prevalence, kappa and the true skill statistic (TSS)

机译:评估物种分布的准确性模型:患病率,卡帕和真正的技能统计(TSS)

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1. In recent years the use of species distribution models by ecologists and conservation managers has increased considerably, along with an awareness of the need to provide accuracy assessment for predictions of such models. The kappa statistic is the most widely used measure for the performance of models generating presence-absence predictions, but several studies have criticized it for being inherently dependent on prevalence, and argued that this dependency introduces statistical artefacts to estimates of predictive accuracy. This criticism has been supported recently by computer simulations showing that kappa responds to the prevalence of the modelled species in a unimodal fashion. 2. In this paper we provide a theoretical explanation for the observed dependence of kappa on prevalence, and introduce into ecology an alternative measure of accuracy, the true skill statistic (TSS), which corrects for this dependence while still keeping all the advantages of kappa. We also compare the responses of kappa and TSS to prevalence using empirical data, by modelling distribution patterns of 128 species of woody plant in Israel. 3. The theoretical analysis shows that kappa responds in a unimodal fashion to variation in prevalence and that the level of prevalence that maximizes kappa depends on the ratio between sensitivity (the proportion of correctly predicted presences) and specificity (the proportion of correctly predicted absences). In contrast, TSS is independent of prevalence. 4. When the two measures of accuracy were compared using empirical data, kappa showed a unimodal response to prevalence, in agreement with the theoretical analysis. TSS showed a decreasing linear response to prevalence, a result we interpret as reflecting true ecological phenomena rather than a statistical artefact. This interpretation is supported by the fact that a similar pattern was found for the area under the ROC curve, a measure known to be independent of prevalence. 5. Synthesis and applications. Our results provide theoretical and empirical evidence that kappa, one of the most widely used measures of model performance in ecology, has serious limitations that make it unsuitable for such applications. The alternative we suggest, TSS, compensates for the shortcomings of kappa while keeping all of its advantages. We therefore recommend the TSS as a simple and intuitive measure for the performance of species distribution models when predictions are expressed as presence-absence maps.
机译:1. 模型由生态学家和保护经理大大增加,以及一个需要提供准确的意识等的预测评估模型。kappa统计是使用最广泛的措施为模型生成的性能presence-absence预测,但一些研究批评它固有的依赖在流行,认为这种依赖性介绍了统计文物的估计预测精度。最近由计算机模拟的支持表明kappa响应的患病率模拟物种单峰的方式。本文我们提供一个理论解释为观察卡巴的依赖流行,引入生态选择测量的准确性,真正的技能统计(TSS)纠正依赖,同时仍然保持优势卡帕。和TSS流行使用经验数据,通过造型128种的分布模式在以色列木本植物。3。分析表明,kappa回应在一个单峰时尚流行的变化,的患病率水平最大化kappa视情况而定在敏感性(比例之间的比率正确预测存在)和特异性(正确预测缺席的比例)。相比之下,TSS发病率无关。当这两个指标的准确性进行了比较使用经验数据,kappa显示单峰应对流行,在协议理论分析。线性响应流行,我们的结果解释作为反映真正的生态现象而不是一个统计人工制品。一个解释是支持的事实发现了类似的模式下的面积ROC曲线,测量已知独立患病率。提供理论和实证结果证据表明,卡帕,使用最广泛之一在生态学模型性能的措施严重的限制,使其不适合这样的应用程序。TSS、补偿kappa的缺点同时保持所有的优势。推荐TSS作为一个简单和直观测量性能的物种当预测分布模型表示为presence-absence地图。

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