Hartley Stephen, Harris Richard, Lester Philip J
Centre for Biodiversity and Restoration Ecology, School of Biological Sciences, Victoria University of Wellington, PO Box 600, Wellington, New Zealand.
Ecol Lett. 2006 Sep;9(9):1068-79. doi: 10.1111/j.1461-0248.2006.00954.x.
Maps of a species' potential range make an important contribution to conservation and invasive species risk analysis. Spatial predictions, however, should be accompanied by an assessment of their uncertainty. Here, we use multimodel inference to generate confidence intervals that incorporate both the uncertainty involved in model selection as well as the error associated with model fitting. In the case of the invasive Argentine ant, we found that it was most likely to occur where the mean daily temperature in mid-winter was 7-14 degrees C and maximum daily temperatures during the hottest month averaged 19-30 degrees C. Uninvaded regions vulnerable to future establishment include: southern China, Taiwan, Zimbabwe, central Madagascar, Morocco, high-elevation Ethiopia, Yemen and a number of oceanic islands. Greatest uncertainty exists over predictions for China, north-east India, Angola, Bolivia, Lord Howe Island and New Caledonia. Quantifying the costs of different errors (false negatives vs. false positives) was considered central for connecting modelling to decision-making and management processes.
某一物种潜在分布范围的地图对保护工作和入侵物种风险分析具有重要意义。然而,空间预测应同时伴随着对其不确定性的评估。在此,我们使用多模型推断来生成置信区间,该区间既包含模型选择中涉及的不确定性,也包含与模型拟合相关的误差。以入侵性阿根廷蚂蚁为例,我们发现其最有可能出现在冬季中期平均日气温为7至14摄氏度、最热月份的日最高气温平均为19至30摄氏度的地区。未来易受其侵扰的未入侵地区包括:中国南部、台湾、津巴布韦、马达加斯加岛中部、摩洛哥、埃塞俄比亚高海拔地区、也门以及一些海洋岛屿。对于中国、印度东北部、安哥拉、玻利维亚、豪勋爵岛和新喀里多尼亚的预测存在最大的不确定性。量化不同误差(假阴性与假阳性)的成本被视为将建模与决策及管理过程相联系的核心所在。