Schmidt Joshua H, Wilson Tammy L, Thompson William L, Reynolds Joel H
Central Alaska Network U.S. National Park Service Fairbanks AK USA.
Southwest Alaska Network U.S. National Park Service Anchorage AK USA.
Ecol Evol. 2017 May 25;7(13):4812-4821. doi: 10.1002/ece3.2912. eCollection 2017 Jul.
Obtaining useful estimates of wildlife abundance or density requires thoughtful attention to potential sources of bias and precision, and it is widely understood that addressing incomplete detection is critical to appropriate inference. When the underlying assumptions of sampling approaches are violated, both increased bias and reduced precision of the population estimator may result. Bear ( spp.) populations can be difficult to sample and are often monitored using mark-recapture distance sampling (MRDS) methods, although obtaining adequate sample sizes can be cost prohibitive. With the goal of improving inference, we examined the underlying methodological assumptions and estimator efficiency of three datasets collected under an MRDS protocol designed specifically for bears. We analyzed these data using MRDS, conventional distance sampling (CDS), and open-distance sampling approaches to evaluate the apparent bias-precision tradeoff relative to the assumptions inherent under each approach. We also evaluated the incorporation of informative priors on detection parameters within a Bayesian context. We found that the CDS estimator had low apparent bias and was more efficient than the more complex MRDS estimator. When combined with informative priors on the detection process, precision was increased by >50% compared to the MRDS approach with little apparent bias. In addition, open-distance sampling models revealed a serious violation of the assumption that all bears were available to be sampled. Inference is directly related to the underlying assumptions of the survey design and the analytical tools employed. We show that for aerial surveys of bears, avoidance of unnecessary model complexity, use of prior information, and the application of open population models can be used to greatly improve estimator performance and simplify field protocols. Although we focused on distance sampling-based aerial surveys for bears, the general concepts we addressed apply to a variety of wildlife survey contexts.
获得野生动物丰度或密度的有用估计值需要认真考虑偏差和精度的潜在来源,并且人们普遍认为解决不完全检测问题对于进行恰当推断至关重要。当抽样方法的基本假设被违反时,总体估计量可能会出现偏差增加和精度降低的情况。熊(多个物种)种群可能难以抽样,并且通常使用标记重捕距离抽样(MRDS)方法进行监测,尽管获得足够的样本量可能成本过高。为了改进推断,我们研究了在专门为熊设计的MRDS协议下收集的三个数据集的基本方法假设和估计量效率。我们使用MRDS、传统距离抽样(CDS)和开放距离抽样方法分析这些数据,以评估相对于每种方法固有的假设而言明显的偏差 - 精度权衡。我们还在贝叶斯框架内评估了在检测参数上纳入信息先验的情况。我们发现CDS估计量的明显偏差较低,并且比更复杂的MRDS估计量更有效。当与关于检测过程的信息先验相结合时,与MRDS方法相比,精度提高了50%以上,且几乎没有明显偏差。此外,开放距离抽样模型揭示了所有熊都可用于抽样这一假设的严重违反情况。推断与调查设计的基本假设和所采用的分析工具直接相关。我们表明,对于熊的空中调查,避免不必要的模型复杂性、使用先验信息以及应用开放种群模型可用于大大提高估计量性能并简化野外协议。尽管我们专注于基于距离抽样的熊的空中调查,但我们所探讨的一般概念适用于各种野生动物调查情况。