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Revisiting sample allocation methods: a simulation-based comparison

机译:重新检测样本分配方法:基于模拟的比较

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In stratified sampling the problem of optimally allocating the sample size is of primary importance, especially in business surveys when reliable estimates are required both for the overall population and for the domains of studies. To this purpose, in this paper we compare allocation methods via a simulation engine highlighting the effects on the reliability of the estimates due only to the sample allocation design. Allocation methods considered in this comparison are: the Neyman allocation, the uniform and proportional allocations, the Costa allocation, the Bankier allocation, the Interior Point Non Linear Programing allocation and the Robust Optimal Allocation with Uniform Stratum Threshold, an allocation method recently adopted by the Italian National Statistical Institute. The last two methods outperform the others at the stratum level. At the overall sample level they perform better than the others together with the Neyman allocation method.
机译:在分层抽样中,最佳地分配样本大小的问题主要是重要的,特别是在企业调查中,当总体人口和研究领域都需要可靠的估计。 为此目的,在本文中,我们通过模拟发动机进行比较分配方法,突出显示对由于样本分配设计的估计的可靠性影响。 在这种比较中考虑的分配方法是:奈曼分配,统一和比例分配,哥斯达分配,副行机分配,内部点非线性编程分配和具有均匀层阈值的鲁棒优化分配,最近采用的分配方法 意大利国家统计研究所。 最后两种方法在层次水平上表现出其他人。 在整体样本水平上,它们与其他与奈曼分配方法一起表现更好。

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