ESTIMATION OF MULTI-WAY TABLES SUBJECT TO COHERENCE CONSTRAINTS

IF 1.6 Q1 STATISTICS & PROBABILITY
F. Greco
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引用次数: 1

Abstract

Nowadays, traditional population censuses based on total enumeration of the population are being accompanied by sample surveys. Sampling within censuses allows to reduce costs and workload of authorities involved in censuses operations, along with the statistical burden for the people involved in the enumeration. In this paper, we deal with estimation of multi-way contingency tables involving variables measured both via census and sampling. In this framework, two main issues need to be addressed: first of all, sample size for estimating some of the entries of the contingency tables may be too small, delivering estimates prone to huge sampling variability. On the other hand, since estimates of the joint distribution need to be coherent with the marginal distribution of the variable collected via a census, estimation methods need to be coherent with the constraint imposed by marginal distribution of variables measured via census. The problem is tackled via a model-based approach that allows to comply with all coherence constraints following a fairly simple procedure. The merit of the proposed methodology is illustrated by means of a simulation study.
受相干约束的多路表估计
在传统的人口普查中,以人口总数为基础的人口普查正在与抽样调查相结合。在人口普查中进行抽样可以减少参与人口普查工作的当局的成本和工作量,同时也可以减轻参与人口普查的人的统计负担。在本文中,我们讨论了包含通过普查和抽样测量的变量的多路列联表的估计。在这个框架中,需要解决两个主要问题:首先,用于估计列联表的某些条目的样本量可能太小,交付的估计容易产生巨大的抽样可变性。另一方面,由于联合分布的估计需要与通过普查收集的变量的边际分布一致,估计方法需要与通过普查测量的变量的边际分布所施加的约束一致。这个问题是通过一种基于模型的方法来解决的,这种方法允许遵循一个相当简单的过程来遵守所有的一致性约束。通过仿真研究说明了所提方法的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Statistica
Statistica STATISTICS & PROBABILITY-
CiteScore
1.70
自引率
0.00%
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0
审稿时长
10 weeks
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