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Multisite Mark-Recapture for Cetaceans: Population Estimates withBayesian Model Averaging

机译:鲸类动物的多站点标记夺回:贝叶斯模型平均的人口估计

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Mark-recapture techniques are widely used to estimate the size of wildlife populations. However, in cetacean photo-identification studies, it is often impractical to sample across the entire range of the population. Consequently, negatively biased population estimates can result when large portions of a population are unavailable for photographic capture. To overcome this problem, we propose that individuals be sampled from a number of discrete sites located throughout the population's range. The recapture of individuals between sites can then be presented in a simple contingency table, where the cells refer to discrete categories formed by combinations of the study sites. We present a Bayesian framework for fitting a suite of log-linear models to these data, with each model representing a different hypothesis about dependence between sites. Modeling dependence facilitates the analysis of opportunistic photo- identification data from study sites located due to convenience rather than by design. Because inference about population size is sensitive to model choice, we use Bayesian Markov chain Monte Carlo approaches to estimate posterior model probabilities, and base inference on a model-averaged estimate of population size. We demonstrate this method in the analysis of photographic mark-recapture data for bottlenose dolphins from three coastal sites around NE Scotland.
机译:标记捕获技术被广泛用于估计野生动植物种群的数量。但是,在鲸类光识别研究中,在整个种群范围内进行采样通常是不切实际的。因此,当大部分人口无法进行照片捕获时,可能会产生负偏差的人口估计。为了克服这个问题,我们建议从分布在整个人口范围内的多个离散地点进行抽样。然后可以在简单的列联表中显示站点之间的个人重新捕获,其中的单元格是指由研究站点的组合形成的离散类别。我们提出了一种贝叶斯框架,用于将一组对数线性模型拟合到这些数据,每个模型代表关于站点之间依赖性的不同假设。建模依赖性有助于从位于便利位置而不是设计位置的研究站点分析机会性光识别数据。因为关于人口规模的推断对模型选择很敏感,所以我们使用贝叶斯马尔可夫链蒙特卡罗方法来估计后验模型概率,并基于对人口规模的模型平均估计来推断。我们在分析苏格兰东北地区三个沿海站点的宽吻海豚的摄影标记捕获数据的分析中证明了这种方法。

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