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Hierarchical modeling of abundance in closed population capture-recapture models under heterogeneity

机译:异质性下封闭种群捕获-捕获模型的丰度分层建模

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摘要

Hierarchical modeling of abundance in space or time using closedpopulation mark-recapture under heterogeneity (model M_h) presents two challenges: (i) finding a flexible likelihood in which abundance appears as an explicit parameter and (ii) fitting the hierarchical model for abundance. The first challenge arises because abundance not only indexes the population size, it also determines the dimension of the capture probabilities in heterogeneity models. A common approach is to use data augmentation to include these capture probabilities directly into the likelihood and fit the model using Bayesian inference via Markov chain Monte Carlo (MCMC). Two such examples of this approach are (i) explicit trans-dimensional MCMC, and (ii) superpopulation data augmentation. The superpopulation approach has the advantage of simple specification that is easily implemented in BUGS and related software. However, it reparameterizes the model so that abundance is no longer included, except as a derived quantity. This is a drawback when hierarchical models for abundance, or related parameters, are desired. Here, we analytically compare the two approaches and show that they are more closely related than might appear superficially. We exploit this relationship to specify the model in a way that allows us to include abundance as a parameter and that facilitates hierarchical modeling using readily available software such as BUGS. We use this approach to model trends in grizzly bear abundance in Yellowstone National Park from 1986 to 1998.
机译:使用异质性下的封闭人口标记捕获(模型M_h)对空间或时间中的丰度进行层次化建模提出了两个挑战:(i)寻找一种将丰度作为显式参数出现的灵活可能性,以及(ii)拟合丰度的层次模型。出现第一个挑战是因为丰度不仅索引了种群大小,而且还决定了异质性模型中捕获概率的维度。一种常见的方法是使用数据增强将这些捕获概率直接包括到可能性中,并通过马尔可夫链蒙特卡洛(MCMC)使用贝叶斯推断来拟合模型。此方法的两个此类示例是(i)显式跨维度MCMC,以及(ii)超级人口数据扩充。超级人口方法的优点是规格简单,可以轻松在BUGS和相关软件中实现。但是,它重新参数化了模型,因此不再包括丰度,而是作为导出量。当需要用于丰度的层次模型或相关参数时,这是一个缺点。在这里,我们分析比较这两种方法,并表明它们之间的联系比从表面上看更紧密。我们利用这种关系来指定模型,该模型允许我们将丰度作为参数包括进来,并有助于使用易于使用的软件(例如BUGS)进行分层建模。我们使用这种方法来模拟1986年至1998年黄石国家公园的灰熊丰度趋势。

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