Misleading overestimation bias in methods to estimate wolf abundance that use spatial models.

Robert L. Crabtree, Dean C. Koch, Subhash R. Lele
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Abstract

1. Population abundance is the main criterion used by agencies to manage and conserve species and it allows adaptive decision-making in response to impacts. Its estimation is particularly important for large mammals, especially carnivores that are notoriously difficult to monitor yet have high ecological and economic importance to humans. Reversal of their historic population decline is also vital to restoring ecosystem health through the ecosystem service of trophic interactions. 2. Because bias and precision (variance) are the independent yardsticks of the quality and reliability of population estimates, we preliminarily assessed new abundance estimators for wolves that non-traditionally use spatial models to estimate the area that an observation represents. Among many biases and problems identified by recent assessments, we identified suspected biases due to obvious violation of the closure assumption in occupancy modeling used to determine the area occupied by territorial pack members. Thus, we chose to simulate the effect of spatial resolution (grid size) on the direction and magnitude of that inherent bias in a recent method called iPOM used in Montana. We also examined the potential bias in their estimate of variance and confidence intervals. 3. We found that even the use of small grid cells (relative to wolf territory size), biased the total area occupied and the number of packs used to calculate abundance. The bias rapidly increases with increasing grid cell size. At the grid cell size used in iPOM for Montana (600 km 2 ) there was a severe overestimation bias of 150% that proliferated through the iPOM submodel structure and resulted in estimated wolf abundance 2.5 times larger than true abundance. 4. This bias alone when combined with a misapplication and underreporting of iPOM's estimate of variance (biased low) results in a precariously misleading situation for decision-makers that threatens wolf populations. Other identified biases that inflate abundance likely make this situation worse but they should be further examined and tested. 5. Due to these biases and the high sensitivity of iPOM's spatial models to estimate area, we suggest that such spatial models should not be used in population estimation methods or such methods, iPOM for example, should be improved and/or restructured with submodels robust to assumption violation thereby reducing bias. Given iPOM's current design, there is no ability to detect change let alone determine wolf population size. 6. We provide a comparative framework for testing and improvement and strongly suggest proper model-assisted sampling designs and hierarchical modeling such as is used in capture-recapture models, especially those that use non-invasive procedures that avoid costly capture and marking. We also recommend collaborative activities that lead to using the best available scientific methods to determine carnivore abundance.
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使用空间模型估算狼群数量的方法存在误导性高估偏差。
1.种群丰度是各机构管理和保护物种的主要标准,它允许针对影响做出适应性决策。对于大型哺乳动物,尤其是肉食动物来说,种群丰度的估算尤为重要。通过营养相互作用的生态系统服务,扭转其数量下降的历史趋势对于恢复生态系统健康也至关重要。2.由于偏差和精度(方差)是衡量种群估计质量和可靠性的独立标准,我们初步评估了新的狼群数量估计方法,这些方法非传统地使用空间模型来估计观测值所代表的区域。在近期评估所发现的许多偏差和问题中,我们发现由于明显违反了用于确定领地狼群成员所占面积的占用模型中的封闭性假设,导致了疑似偏差。因此,我们选择模拟空间分辨率(网格大小)对蒙大拿州最近使用的 iPOM 方法中固有偏差的方向和大小的影响。我们还研究了其估计方差和置信区间的潜在偏差。3.我们发现,即使使用较小的网格单元(相对于狼领地的大小),用于计算丰度的狼群所占据的总面积和数量也会出现偏差。随着网格单元大小的增加,偏差也会迅速增加。在蒙大拿州 iPOM 中使用的网格单元大小(600 平方公里)下,存在 150% 的严重高估偏差,该偏差在 iPOM 子模型结构中扩散,导致估计的狼群丰度比真实丰度高出 2.5 倍。4.4. 这种偏差与 iPOM 方差估计值(偏低)的误用和低报相结合,给决策者造成了严重的误导,威胁到狼的数量。其他已发现的夸大丰度的偏差可能会使情况变得更糟,但这些偏差应进一步研究和测试。5.由于这些偏差以及 iPOM 空间模型对估计面积的高度敏感性,我们建议在种群估计方法中不使用此类空间模型,或者对此类方法(例如 iPOM)进行改进和/或重组,使其子模型对违反假设的情况具有稳健性,从而减少偏差。鉴于 iPOM 目前的设计,没有能力检测变化,更不用说确定狼的种群数量了。6.我们提供了一个用于测试和改进的比较框架,并强烈建议采用适当的模型辅助采样设计和分层建模,如在捕获-再捕获模型中使用的方法,特别是那些使用非侵入性程序以避免昂贵的捕获和标记的方法。我们还建议开展合作活动,利用现有的最佳科学方法来确定食肉动物的丰度。
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