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Spatial smoothing techniques for the assessment of habitat suitability

机译:用于评估栖息地适宜性的空间平滑技术

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Precise knowledge about factors influencing the habitat suitability of a certain species forms the basis for the implementation of effective programs to conserve biological diversity. Such knowledge is frequently gathered from studies relating abundance data to a set of influential variables in a regression setup. In particular, generalised linear models are used to analyse binary presence/absence data or counts of a certain species at locations within an observation area. However, one of the key assumptions of generalised linear models, the independence of observations is often violated in practice since the points at which the observations are collected are spatially aligned. In this paper, we describe a general framework for semiparametric spatial generalised linear models that allows for the routine analysis of non-normal spatially aligned regression data. The approach is utilised for the analysis of a data set of synthetic bird species in beech forests, revealing that ignorance of spatial dependence actually may lead to false conclusions in a number of situations.
机译:对影响某些物种栖息地适宜性的因素的精确了解,是实施有效的保护生物多样性计划的基础。经常从有关丰度数据与回归设置中一组影响变量的研究中收集此类知识。特别是,广义线性模型用于分析在观测区域内位置的二进制存在/不存在数据或某些物种的计数。但是,作为广义线性模型的关键假设之一,在实践中经常会违反观测的独立性,因为收集观测的点在空间上是对齐的。在本文中,我们描述了半参数空间广义线性模型的通用框架,该框架允许对非正态空间对齐的回归数据进行常规分析。该方法用于分析山毛榉森林中合成鸟类物种的数据集,表明对空间依赖性的无知实际上可能在许多情况下导致错误的结论。

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