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Presence-absence versus presence-only modelling methods for predicting bird habitat suitability

机译:有无与仅有的建模方法预测鸟类栖息地的适宜性

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摘要

Habitat suitability models can be generated using methods requiring information on species presence or species presence and absence. Knowledge of the predictive performance of such methods becomes a critical issue to establish their optimal scope of application for mapping current species distributions under different constraints. Here, we use breeding bird atlas data in Catalonia as a working example and attempt to analyse the relative performance of two methods: the Ecological Niche factor Analysis (ENFA) using presence data only and Generalised Linear Models (GLM) using presence/absence data. Models were run on a set of forest species with similar habitat requirements, but with varying occurrence rates (prevalence) and niche positions (marginality). Our results support the idea that GLM predictions are more accurate than those obtained with ENFA. This was particularly true when species were using available habitats proportionally to their suitability, making absence data reliable and useful to enhance model calibration. Species marginality in niche space was also correlated to predictive accuracy, i.e. species with less restricted ecological requirements were modelled less accurately than species with more restricted requirements. This pattern was irrespective of the method employed. Models for wide-ranging and tolerant species were more sensitive to absence data, suggesting that presence/absence methods may be particularly important for predicting distributions of this type of species. We conclude that modellers should consider that species ecological characteristics are critical in determining the accuracy of models and that it is difficult to predict generalist species distributions accurately and this is independent of the method used. Being based on distinct approaches regarding adjustment to data and data quality, habitat distribution modelling methods cover different application areas, making it difficult to identify one that should be universally applicable. Our results suggest however, that if absence data is available, methods using this information should be preferably used in most situations.
机译:可以使用需要有关物种存在或物种存在和不存在的信息的方法来生成栖息地适应性模型。了解此类方法的预测性能成为建立其在不同约束条件下绘制当前物种分布的最佳应用范围的关键问题。在此,我们以加泰罗尼亚的鸟类图集繁殖数据为例,尝试分析两种方法的相对性能:仅使用存在数据的生态位因子分析(ENFA)和使用存在/不存在数据的广义线性模型(GLM)。在一组具有相似栖息地要求,但发生率(患病率)和生境位置(边际)不同的森林物种上运行模型。我们的结果支持这样的想法,即GLM预测比ENFA获得的预测更准确。当物种根据其适应性成比例地使用可利用的生境时,尤其如此,这使得缺勤数据可靠且对增强模型校准有用。生态位空间中的物种边缘性也与预测准确性相关,即,生态要求受到限制的物种比生态要求受到限制的物种建模的准确性较低。该模式与所采用的方法无关。种类广泛且具有耐受性的物种的模型对缺席数据更为敏感,这表明存在/缺失方法对于预测此类物种的分布可能特别重要。我们得出的结论是,建模者应考虑物种的生态特征对于确定模型的准确性至关重要,并且很难准确地预测通才物种的分布,这与所使用的方法无关。由于基于关于调整数据和数据质量的不同方法,栖息地分布建模方法涵盖了不同的应用领域,因此很难确定一种应该普遍适用的方法。但是,我们的结果表明,如果可以使用缺勤数据,则在大多数情况下,应优先使用使用此信息的方法。

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