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Multiple collection estimation of population size: A generalization of 'capture-recapture'.

机译:人口规模的多重收集估计:“捕获再捕获”的概括。

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摘要

We consider a class of statistical models generalizing the very useful, classical capture-recapture model. The classical model involves two independent surveys, and hence (usually) two "collectors." Our generalizations allow for an arbitrary number of collectors, and generalize the classical model also in some other respects.;The problem is precisely formulated; minimal sufficient statistics are described; and the maximum likelihood estimator is derived and its existence and uniqueness are established. Asymptotic properties of this MLE are then studies in three separate asymptotic regimes. For one of these it turns out, rather surprisingly that the MLE is not asymptotically efficient, and can be improved. This work further develops "modern" asymptotic theory in settings in which 1) the dimension of the sample space grows with the number of observations and 2) the data and parameter space are each discrete. A variant of the Cramer-Rao inequality is derived for such settings, and is used in our analysis of the multiple collector problem.
机译:我们考虑一类统计模型,该模型概括了非常有用的经典捕获-捕获模型。经典模型涉及两个独立的调查,因此(通常)涉及两个“收集者”。我们的归纳允许任意数量的收集器,并在其他方面也归纳了经典模型。描述了最少的统计量;推导出最大似然估计量,并确定其存在性和唯一性。然后在三个单独的渐近方案中研究此MLE的渐近性质。对于其中之一,非常令人惊讶的是,MLE不是渐近有效的,可以改进。这项工作在环境中进一步发展了“现代”渐近理论,在这种环境中:1)样本空间的维数随观察次数的增长而增长; 2)数据和参数空间都是离散的。 Cramer-Rao不等式的一个变体是针对此类设置而派生的,并用于我们对多收集器问题的分析中。

著录项

  • 作者

    Ernst, Philip.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 92 p.
  • 总页数 92
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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