Latimer Andrew M, Wu Shanshan, Gelfand Alan E, Silander John A
Department of Ecology and Evolutionary Biology, University of Connecticut, 75 North Eagleville Road, Unit 3043, Storrs, Connecticut 06269, USA.
Ecol Appl. 2006 Feb;16(1):33-50. doi: 10.1890/04-0609.
Models of the geographic distributions of species have wide application in ecology. But the nonspatial, single-level, regression models that ecologists have often employed do not deal with problems of irregular sampling intensity or spatial dependence, and do not adequately quantify uncertainty. We show here how to build statistical models that can handle these features of spatial prediction and provide richer, more powerful inference about species niche relations, distributions, and the effects of human disturbance. We begin with a familiar generalized linear model and build in additional features, including spatial random effects and hierarchical levels. Since these models are fully specified statistical models, we show that it is possible to add complexity without sacrificing interpretability. This step-by-step approach, together with attached code that implements a simple, spatially explicit, regression model, is structured to facilitate self-teaching. All models are developed in a Bayesian framework. We assess the performance of the models by using them to predict the distributions of two plant species (Proteaceae) from South Africa's Cape Floristic Region. We demonstrate that making distribution models spatially explicit can be essential for accurately characterizing the environmental response of species, predicting their probability of occurrence, and assessing uncertainty in the model results. Adding hierarchical levels to the models has further advantages in allowing human transformation of the landscape to be taken into account, as well as additional features of the sampling process.
物种地理分布模型在生态学中有着广泛应用。但生态学家常用的非空间、单层次回归模型无法处理不规则采样强度或空间依赖性问题,也不能充分量化不确定性。我们在此展示如何构建能处理空间预测这些特征的统计模型,并对物种生态位关系、分布以及人类干扰的影响提供更丰富、更有力的推断。我们从一个熟悉的广义线性模型入手,并加入额外特征,包括空间随机效应和层次水平。由于这些模型是完全指定的统计模型,我们表明在不牺牲可解释性的情况下增加复杂性是可行的。这种循序渐进的方法,连同实现一个简单的、空间明确的回归模型的附带代码,旨在便于自学。所有模型均在贝叶斯框架下开发。我们通过用这些模型预测南非开普植物区两种植物(山龙眼科)的分布来评估模型性能。我们证明使分布模型具有空间明确性对于准确描述物种的环境响应、预测其出现概率以及评估模型结果的不确定性可能至关重要。给模型添加层次水平还有进一步的优势,即可以考虑人类对景观的改造以及采样过程的其他特征。