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Computational Aspects of N-Mixture Models

机译:N混合模型的计算方面

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The N-mixture model is widely used to estimate the abundance of a population in the presence of unknown detection probability from only a set of counts subject to spatial and temporal replication (Royle, 2004, Biometrics60, 105-115). We explain and exploit the equivalence of N-mixture and multivariate Poisson and negative-binomial models, which provides powerful new approaches for fitting these models. We show that particularly when detection probability and the number of sampling occasions are small, infinite estimates of abundance can arise. We propose a sample covariance as a diagnostic for this event, and demonstrate its good performance in the Poisson case. Infinite estimates may be missed in practice, due to numerical optimization procedures terminating at arbitrarily large values. It is shown that the use of a bound, K, for an infinite summation in the N-mixture likelihood can result in underestimation of abundance, so that default values of K in computer packages should be avoided. Instead we propose a simple automatic way to choose K. The methods are illustrated by analysis of data on Hermann's tortoise Testudo hermanni.
机译:N-混合模型被广泛用于仅根据一组受时空复制的计数来估计未知检测概率存在下的种群数量(Royle,2004,Biometrics60,105-115)。我们解释和利用N混合,多元Poisson模型和负二项式模型的等价性,这为拟合这些模型提供了有力的新方法。我们表明,尤其是当检测概率和采样次数较少时,可能会出现无限的估计丰度。我们提出样本协方差作为对此事件的诊断,并证明其在Poisson案例中的良好性能。由于数值优化程序终止于任意大的值,因此在实践中可能会错过无限的估计。结果表明,将边界K用于N混合可能性的无穷总和可能会导致丰度低估,因此应避免计算机软件包中K的默认值。相反,我们提出了一种简单的自动选择K的方法。通过对赫尔曼陆龟陆龟陆龟的数据进行分析来说明这些方法。

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