Studying Neighborhoods Using Uncertain Data from the American Community Survey: A Contextual Approach

S. Spielman, A. Singleton
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引用次数: 75

Abstract

In 2010 the American Community Survey (ACS) replaced the long form of the decennial census as the sole national source of demographic and economic data for small geographic areas such as census tracts. These small area estimates suffer from large margins of error, however, which makes the data difficult to use for many purposes. The value of a large and comprehensive survey like the ACS is that it provides a richly detailed, multivariate, composite picture of small areas. This article argues that one solution to the problem of large margins of error in the ACS is to shift from a variable-based mode of inquiry to one that emphasizes a composite multivariate picture of census tracts. Because the margin of error in a single ACS estimate, like household income, is assumed to be a symmetrically distributed random variable, positive and negative errors are equally likely. Because the variable-specific estimates are largely independent from each other, when looking at a large collection of variables these random errors average to zero. This means that although single variables can be methodologically problematic at the census tract scale, a large collection of such variables provides utility as a contextual descriptor of the place(s) under investigation. This idea is demonstrated by developing a geodemographic typology of all U.S. census tracts. The typology is firmly rooted in the social scientific literature and is organized around a framework of concepts, domains, and measures. The typology is validated using public domain data from the City of Chicago and the U.S. Federal Election Commission. The typology, as well as the data and methods used to create it, is open source and published freely online.
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使用美国社区调查中的不确定数据研究社区:一种情境方法
2010年,美国社区调查(ACS)取代了冗长的十年一次的人口普查,成为人口普查区等小地理区域人口和经济数据的唯一国家来源。然而,这些小面积估计值的误差幅度很大,这使得数据难以用于许多目的。像ACS这样的大型综合调查的价值在于,它提供了小区域的丰富详细、多元、综合的情况。本文认为,解决美国人口普查中较大误差范围问题的一种方法是从基于变量的调查模式转向强调人口普查区的复合多元图景。因为单个ACS估计的误差范围,就像家庭收入一样,被假设为一个对称分布的随机变量,所以正负误差的可能性是一样的。因为特定变量的估计在很大程度上是相互独立的,所以当观察大量变量时,这些随机误差的平均值为零。这意味着,尽管在人口普查区范围内,单个变量可能在方法上存在问题,但此类变量的大量集合提供了作为调查地点上下文描述符的实用工具。通过对美国所有人口普查区进行地理人口类型学研究,可以证明这一观点。类型学牢固地植根于社会科学文献,并围绕概念、领域和测量的框架进行组织。该类型使用来自芝加哥市和美国联邦选举委员会的公共领域数据进行验证。类型学,以及用于创建它的数据和方法,都是开源的,并在网上免费发布。
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