数据说明:在结合多个来源的住房数据以确定过度拥挤的家庭时存在挑战。

IF 2.2 Q3 HEALTH CARE SCIENCES & SERVICES
International Journal of Population Data Science Pub Date : 2025-05-20 eCollection Date: 2023-01-01 DOI:10.23889/ijpds.v8i2.2927
Laura Scott, Yan Weigang, Marcella Ucci, Jessica Sheringham
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引用次数: 0

摘要

背景:这个项目在伦敦(英格兰)的一个城市地方当局进行,目的是利用地方议会可获得的关于人口及其住房的数据,评估产生当地过度拥挤指数的可行性。我们使用来自公开的能源绩效证书和商业物业平台的唯一物业参考号码,将家庭层面的数据与议会可获得的人口及其住房特征数据合并,这些数据来自多个来源,包括议会税收等级和议会住房数据库。采用多重插值解决缺失数据。利用该数据集,可以根据卧室标准和空间标准,为有受抚养子女的家庭生成两个过度拥挤指数,这两个指数可以与国家得出的估计值进行比较。数据挑战:我们在数据方面遇到了三个挑战。1. 通过与家庭数据的联系,排除了人口中的个体。2. 过度拥挤的定义是模棱两可的,适用范围也不尽相同。3. 许多地方都面临着大量家庭数据缺失的问题,尤其是卧室数量。我们将讨论如何解决这些问题,并以一个当地的例子说明它们如何影响对过度拥挤流行程度的估计。经验教训:需要进一步明确如何定义卧室,以比较地方和全国产生的过度拥挤现象。获得关于卧室数量的全国记录将有助于当地地区确定其人口过度拥挤的情况。尽管存在这些挑战,我们证明了生成过度拥挤指数是可行的,这些指数可以为研究人员和当地政策制定者寻求制定或评估解决家庭过度拥挤问题的策略提供帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

<i>Data Note</i>: Challenges when combining housing data from multiple sources to identify overcrowded households.

Data Note: Challenges when combining housing data from multiple sources to identify overcrowded households.

Background: This project in one urban local authority in London (England) sought to assess the feasibility of generating locally-derived indices of overcrowding using data available to local councils on the population and their homes.We merged data at household level using the Unique Property Reference Number from publicly available Energy Performance Certificates and commercial property platforms, with data available to councils on the population and their housing characteristics, drawn from multiple sources including council tax bands and council housing databases. Multiple imputation was used to address missing data. Using the dataset, it was possible to generate two indices of overcrowding for households with dependent children, based on the bedroom standard and the space standard, which could be compared with nationally derived estimates.

Data challenges: We encountered three challenges with data. 1. Individuals in the population were excluded through linkage with household-level data. 2. Definitions of overcrowding are ambiguous and variably applied. 3. Many local areas face high proportions of missing household data, particularly numbers of bedrooms. We discuss how we addressed such problems and illustrate with a local example how they could affect estimates of overcrowding prevalence.

Lessons learned: Further clarity is needed in how bedrooms are defined to compare overcrowding prevalence generated locally and nationally. Access to national records on bedroom numbers would facilitate local areas to identify overcrowding in their own populations. Despite these challenges, we demonstrate it is feasible to generate overcrowding indices that can be useful for researchers and local policy makers seeking to develop or evaluate strategies to address household overcrowding.

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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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