Graif Corina, Sampson Robert J
Homicide Stud. 2009 Jul 15;13(3):242-260. doi: 10.1177/1088767909336728.
This paper examines the connection of immigration and diversity to homicide by advancing a recently developed approach to modeling spatial dynamics-geographically weighted regression. In contrast to traditional global averaging, we argue on substantive grounds that neighborhood characteristics vary in their effects across neighborhood space, a process of "spatial heterogeneity." Much like treatment-effect heterogeneity and distinct from spatial spillover, our analysis finds considerable evidence that neighborhood characteristics in Chicago vary significantly in predicting homicide, in some cases showing countervailing effects depending on spatial location. In general, however, immigrant concentration is either unrelated or inversely related to homicide, whereas language diversity is consistently linked to lower homicide. The results shed new light on the immigration-homicide nexus and suggest the pitfalls of global averaging models that hide the reality of a highly diversified and spatially stratified metropolis.
本文通过采用一种最近开发的空间动态建模方法——地理加权回归,研究了移民和多样性与凶杀案之间的联系。与传统的全局平均方法不同,我们基于实质性理由认为,邻里特征在邻里空间中的影响各不相同,这是一个“空间异质性”过程。与治疗效果异质性类似但不同于空间溢出效应,我们的分析发现大量证据表明,芝加哥的邻里特征在预测凶杀案方面差异显著,在某些情况下,根据空间位置会显示出抵消效应。然而,总体而言,移民集中程度与凶杀案要么无关,要么呈负相关,而语言多样性始终与较低的凶杀案发生率相关。这些结果为移民与凶杀案之间的关系提供了新的见解,并揭示了隐藏高度多样化和空间分层大都市现实的全局平均模型的缺陷。