Repeated weighting in mixed-mode censuses

IF 1.2 Q3 ECONOMICS Economics and Business Review Pub Date : 2021-03-01 DOI:10.18559/ebr.2021.1.3
M. Szymkowiak, Kamil Wilak
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引用次数: 2

Abstract

Abstract The main aim of the paper is to use the repeated weighting (RW) method on data from the National Census of Population and Housing 2011 (NCPH) and Labour Force Survey (LFS) to ensure consistency between margins of final tables derived from different statistical sources. This technique, based on different data sources, would ensure consistency between estimates in final output tables. This is the first application of the RW approach on data from official statistics in Poland. The results obtained by applying the RW method to data from the NCPH and additional surveys (e.g. LFS) may be used by Statistics Poland for the formulation of conclusions and recommendations for the upcoming census in 2021. The method may be also considered as an important step towards the production of timely and more detailed statistical information in Poland based on multi-source data infrastructure in general4.
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混合模式人口普查的重复加权
本文的主要目的是对2011年全国人口和住房普查(NCPH)和劳动力调查(LFS)的数据使用重复加权(RW)方法,以确保不同统计来源得出的最终表格的边际之间的一致性。这种基于不同数据源的技术将确保最终输出表中估算值之间的一致性。这是波兰首次将RW方法应用于官方统计数据。波兰统计局可将RW方法应用于国家人口普查和其他调查(例如LFS)的数据所获得的结果,用于为即将到来的2021年人口普查制定结论和建议。该方法也可视为朝着在波兰根据一般的多来源数据基础设施及时和更详细的统计资料迈出的重要一步4。
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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CiteScore
1.40
自引率
28.60%
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0
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