Ecol Appl. 2014 Mar;24(2):363-74. doi: 10.1890/12-2151.1.
Determining the range of a species and exploring species--habitat associations are central questions in ecology and can be answered by analyzing presence--absence data. Often, both the sampling of sites and the desired area of inference involve neighboring sites; thus, positive spatial autocorrelation between these sites is expected. Using survey data for the Southern Ground Hornbill (Bucorvus leadbeateri) from the Southern African Bird Atlas Project, we compared advantages and disadvantages of three increasingly complex models for species occupancy: an occupancy model that accounted for nondetection but assumed all sites were independent, and two spatial occupancy models that accounted for both nondetection and spatial autocorrelation. We modeled the spatial autocorrelation with an intrinsic conditional autoregressive (ICAR) model and with a restricted spatial regression (RSR) model. Both spatial models can readily be applied to any other gridded, presence--absence data set using a newly introduced R package. The RSR model provided the best inference and was able to capture small-scale variation that the other models did not. It showed that ground hornbills are strongly dependent on protected areas in the north of their South African range, but less so further south. The ICAR models did not capture any spatial autocorrelation in the data, and they took an order, of magnitude longer than the RSR models to run. Thus, the RSR occupancy model appears to be an attractive choice for modeling occurrences at large spatial domains, while accounting for imperfect detection and spatial autocorrelation.
确定物种的范围和探索物种-栖息地的联系是生态学中的核心问题,可以通过分析存在-缺失数据来回答。通常,站点的采样和所需的推理区域都涉及相邻的站点,因此,这些站点之间存在正的空间自相关是预期的。我们使用来自南部非洲鸟类图集项目的南部地面犀鸟(Bucorvus leadbeateri)的调查数据,比较了三种越来越复杂的物种占有模型的优缺点:一种考虑了未检测到的情况但假设所有站点都是独立的占有模型,以及两种考虑了未检测到和空间自相关的空间占有模型。我们使用内在条件自回归(ICAR)模型和受限空间回归(RSR)模型来模拟空间自相关。这两种空间模型都可以使用新引入的 R 包轻松应用于任何其他网格化的存在-缺失数据集。RSR 模型提供了最佳的推断能力,并能够捕捉到其他模型无法捕捉到的小规模变化。它表明,地面犀鸟在南非北部的保护区内强烈依赖保护区,而在南部则依赖程度较低。ICAR 模型没有捕捉到数据中的任何空间自相关,并且它们的运行时间比 RSR 模型长一个数量级。因此,RSR 占有模型似乎是在考虑不完美检测和空间自相关的情况下对大空间域的发生进行建模的一个有吸引力的选择。