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A Bayesian state-space model using age-at-harvest data for estimating the population of black bears ( Ursus americanus ) in Wisconsin

机译:使用收获年龄数据估计威斯康星州黑熊种群的贝叶斯状态空间模型

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Population estimation is essential for the conservation and management of fish and wildlife, but accurate estimates are often difficult or expensive to obtain for cryptic species across large geographical scales. Accurate statistical models with manageable financial costs and field efforts are needed for hunted populations and using age-at-harvest data may be the most practical foundation for these models. Several rigorous statistical approaches that use age-at-harvest and other data to accurately estimate populations have recently been developed, but these are often dependent on (a) accurate prior knowledge about demographic parameters of the population, (b) auxiliary data, and (c) initial population size. We developed a two-stage state-space Bayesian model for a black bear ( Ursus americanus ) population with age-at-harvest data, but little demographic data and no auxiliary data available, to create a statewide population estimate and test the sensitivity of the model to bias in the prior distributions of parameters and initial population size. The posterior abundance estimate from our model was similar to an independent capture-recapture estimate from tetracycline sampling and the population trend was similar to the catch-per-unit-effort for the state. Our model was also robust to bias in the prior distributions for all parameters, including initial population size, except for reporting rate. Our state-space model created a precise estimate of the black bear population in Wisconsin based on age-at-harvest data and potentially improves on previous models by using little demographic data, no auxiliary data, and not being sensitive to initial population size.
机译:人口估计对于鱼类和野生动植物的保护和管理至关重要,但是要获得较大地理范围内的隐秘物种,准确的估计通常是困难或昂贵的。对于被追捕的人群,需要具有可控的财务成本和实地工作的准确统计模型,并且使用收获年龄数据可能是这些模型的最实用基础。最近开发了几种严格的统计方法,这些方法使用收割年龄和其他数据来准确估计人口,但是这些方法通常取决于(a)关于人口统计参数的准确先验知识,(b)辅助数据,以及( c)初始人口规模。我们为黑熊(Ursus americanus)种群开发了一个两阶段状态空间贝叶斯模型,该模型具有收获年龄数据,但人口统计数据很少,没有可用的辅助数据,以创建全州范围的种群估计并测试种群的敏感性。偏向于先验参数分布和初始种群规模的模型。我们模型的后丰度估算值类似于四环素采样的独立捕获-捕获估算值,人口趋势类似于该州的单位捕获量。我们的模型还很健壮,可以对所有参数的先前分布进行偏差,包括初始种群规模,但报告率除外。我们的状态空间模型基于收获年龄数据创建了威斯康星州黑熊种群的精确估算,并可能通过使用少量人口统计学数据,不使用辅助数据以及对初始种群规模不敏感的方式对以前的模型进行了改进。

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