使用关联评估人口估计的覆盖率。

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES International Journal of Population Data Science Pub Date : 2022-08-25 DOI:10.23889/ijpds.v7i3.2038
Sarah Collyer, Josie Plachta
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引用次数: 0

摘要

目的人口统计指数(DI)由五个相连的行政数据集组成,用于人口估计。目前的联动方法不适合利用这一资产的力量。利用2021年英格兰和威尔士人口普查,我们正在开发一种创新的综合联系方法,以充分利用DI的力量。方法使用非贪婪的确定性和概率性链接方法,我们将在我们认为存在链接的复合水平上将DI与人口普查联系起来——即,将人口普查集群(由链接的人口普查和人口普查覆盖率调查(CCS)记录组成)与DI集群(由用于制作DI的数据源的链接记录组成)联系起来。然后,我们将对这些链接集群中的记录进行成对链接,将个人来源记录与人口普查联系起来。我们将利用文书审查来解决不确定和冲突的联系,并告知我们的联系质量。结果我们预计会产生一个高质量的链接,该链接将告知DI的覆盖率与人口普查相比如何(通过复合水平链接)以及DI本身的质量(通过成对水平链接)。我们开发了一个文书匹配系统,可以显示复合级别的链接,即候选聚类对。我们将根据精心选择的邮政编码区域内的记录,调整我们的文书审查和质量评估,以确保对所有难以计数的群体和地理区域进行采样。使用大型数据集是我们正在通过使用分布式计算和减少搜索空间来克服的挑战。2021年人口普查以前曾以高精度与CCS联系在一起;这些记录被认为是内在联系的。结论为了评估国家人口估计的质量及其政策决策,我们将一个关键的综合人口水平数据集与2021年英格兰和威尔士人口普查联系起来。演示将展示我们正在开发的方法,以及我们如何确保尽可能高的质量。
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Using linkage to assess coverage of population estimates.
ObjectivesThe Demographic Index (DI) comprises of five linked administrative datasets, used for population estimation. Current linkage methods are not ideal to utilise the power of this asset. Using the 2021 England and Wales Census, we are developing an innovative composite linkage method to fully utilise the power of the DI. ApproachUsing non-greedy deterministic and probabilistic linkage methods, we will link the DI to the Census at a composite level where we believe links exist – i.e., linking a Census cluster (consisting of linked Census and Census Coverage Survey (CCS) records) with a DI cluster (consisting of linked records from the data sources used to make the DI). We will then conduct a pairwise linkage of records from these linked clusters to link individual source records to the Census. We will utilise clerical review to resolve uncertain and conflicting links and to inform the quality of our linkage. ResultsWe anticipate producing a high-quality linkage that will inform how the coverage of the DI compares to Census (through the composite-level linkage) and the quality of the DI itself (through the pairwise-level linkage). We have developed a clerical matching system that can display composite-level linkage, i.e., candidate cluster-pairs. We will tailor our clerical review and quality assessment to records that fall within carefully chosen postcode areas, to ensure all hard-to-count groups and geographical areas are sampled. Working with large datasets is a challenge we are overcoming by using distributed computing and search space reduction. The 2021 Census has been previously linked to the CCS with high accuracy; these records are considered intrinsically linked. ConclusionTo assess national population estimates’ quality and the policy decisions based upon them, we are linking a key composite population-level dataset to the 2021 England and Wales Census. The presentation will showcase the methods we are developing and how we are ensuring the highest quality possible.
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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