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首页> 外文期刊>Journal of the Royal Statistical Society. Series C, Applied statistics >Nonparametric maximum likelihood estimation of population size based on the counting distribution
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Nonparametric maximum likelihood estimation of population size based on the counting distribution

机译:基于计数分布的人口规模的非参数最大似然估计

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摘要

The paper discusses the estimation of an unknown population size n. Suppose that an identification mechanism can identify n_(obs) cases. The Horvitz-Thompson estimator of n adjusts this number by the inverse of 1 -p_0, where the latter is the probability of not identifying a case. When repeated counts of identifying the same case are available, we can use the counting distribution for estimating p_0 to solve the problem. Frequently, the Poisson distribution is used and, more recently, mixtures of Poisson distributions. Maximum likelihood estimation is discussed by means of the EM algorithm. For truncated Poisson mixtures, a nested EM algorithm is suggested and illustrated for several application cases. The algorithmic principles are used to show an inequality, stating that the Horvitz-Thompson estimator of n by using the mixed Poisson model is always at least as large as the estimator by using a homogeneous Poisson model. In turn, if the homogeneous Poisson model is misspecified it will, potentially strongly, underestimate the true population size. Examples from various areas illustrate this finding.
机译:本文讨论了未知人口规模n的估计。假设一种识别机制可以识别n_(obs)个案例。 n的Horvitz-Thompson估计量通过1 -p_0的倒数来调整此数字,其中后者是无法识别案件的概率。当可以使用重复计数来识别相同病例时,我们可以使用计数分布来估计p_0来解决问题。通常使用Poisson分布,最近使用Poisson分布的混合。利用EM算法讨论了最大似然估计。对于截断的Poisson混合物,建议并说明了几种应用案例的嵌套EM算法。算法原理用于显示不等式,指出使用混合Poisson模型的n的Horvitz-Thompson估计量始终至少与使用齐次Poisson模型的估计量一样大。反过来,如果均质泊松模型的指定不正确,则可能会严重低估实际人口规模。来自各个领域的例子说明了这一发现。

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