Bader Michael D M, Ailshire Jennifer A
Department of Sociology and Center on Health, Risk and Society, American University, Washington, DC, USA.
Andrus Gerontology Center, University of Southern California, Los Angeles, CA, USA.
Sociol Methodol. 2014 Aug;44(1):322-368. doi: 10.1177/0081175013516749. Epub 2014 Feb 7.
Accurately measuring attributes in neighborhood environments allows researchers to study the influence of neighborhoods on individual-level outcomes. Researchers working to improve the measurement of neighborhood attributes generally advocate doing so in one of two ways: improving the theoretical relevance of measures and correctly defining the appropriate spatial scale. The data required by the first, "ecometric" neighborhood assessments on a sample of neighborhoods, are generally incompatible with the methods of the second, which tend to rely on population data. In this article, the authors describe how ecometric measures of theoretically relevant attributes observed on a sample of city blocks can be combined with a geostatistical method known as kriging to develop city block-level estimates across a city that can be configured to multiple neighborhood definitions. Using a cross-validation study with data from a 2002 systematic social observation of physical disorder on 1,663 city blocks in Chicago, the authors show that this method creates valid results. They then demonstrate, using neighborhood measures aggregated to three different spatial scales, that residents' perceptions of both fear and neighborhood disorder vary substantially across different spatial scales.
准确测量邻里环境中的属性,能让研究人员探究邻里环境对个体层面结果的影响。致力于改进邻里属性测量方法的研究人员,通常主张通过以下两种方式之一来进行:提高测量方法的理论相关性以及正确界定合适的空间尺度。第一种“生态计量学”邻里评估方法,在邻里样本上所需的数据,通常与第二种方法不兼容,第二种方法往往依赖人口数据。在本文中,作者描述了如何将在城市街区样本上观察到的理论相关属性的生态计量学测量方法,与一种名为克里金法的地质统计学方法相结合,以在整个城市中开发可配置为多种邻里定义的城市街区层面估计值。通过对2002年对芝加哥1663个城市街区的物理无序状况进行系统社会观察的数据进行交叉验证研究,作者表明该方法能得出有效的结果。然后,他们使用汇总到三种不同空间尺度的邻里测量方法进行演示,结果表明居民对恐惧和邻里无序状况的认知在不同空间尺度上有很大差异。