Small-area estimates from consumer trace data

IF 2.1 3区 社会学 Q2 DEMOGRAPHY Demographic Research Pub Date : 2022-12-06 DOI:10.4054/demres.2022.47.27
Arthur Acolin, Ari Decter-Frain, Matt Hall
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Abstract

BACKGROUND Timely, accurate, and precise demographic estimates at various levels of geography are crucial for planning, policymaking, and analysis. In the United States, data from the decennial census and annual American Community Survey (ACS) serve as the main sources for subnational demographic estimates. While estimates derived from these sources are widely regarded as accurate, their timeliness is limited and variability sizable for small geographic units like towns and neighborhoods. OBJECTIVE This paper investigates the potential for using nonrepresentative consumer trace data assembled by commercial vendors to produce valid and timely estimates. We focus on data purchased from Data Axle, which contains the names and addresses of over 150 million Americans annually.
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根据消费者追踪数据的小区域估计
背景在不同地理层次上及时、准确和精确的人口估计对于规划、决策和分析至关重要。在美国,十年一次的人口普查和年度美国社区调查的数据是国家以下人口估计的主要来源。虽然从这些来源得出的估计被广泛认为是准确的,但它们的及时性有限,对于城镇和社区等小地理单元来说,可变性相当大。目的本文研究了使用商业供应商收集的非代表性消费者追踪数据来产生有效和及时估计的可能性。我们专注于从data Axle购买的数据,该数据每年包含超过1.5亿美国人的姓名和地址。
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来源期刊
Demographic Research
Demographic Research DEMOGRAPHY-
CiteScore
3.90
自引率
4.80%
发文量
63
审稿时长
28 weeks
期刊介绍: Demographic Research is a free, online, open access, peer-reviewed journal of the population sciences published by the Max Planck Institute for Demographic Research in Rostock, Germany. The journal pioneers an expedited review system. Contributions can generally be published within one month after final acceptance.
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