强奸的邻里水平预测因子:一种新的空间回归方法

IF 3.3 1区 社会学 Q1 CRIMINOLOGY & PENOLOGY
Rachel E. Lovell , Noah Lorincz-Comi , Jacqueline Curtis , Andrew Curtis , Jayakrishnan Ajayakumar , Lacey Caparole
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引用次数: 0

摘要

尽管几十年来一直在研究空间和犯罪之间的关系,但专门调查空间和强奸的研究却很少。本研究在两年多的时间里,通过地理加权回归(GWR)在美国俄亥俄州克利夫兰市的人口普查区水平上探索了强奸的空间聚类和邻里水平的预测因素,填补了这一空白。在一项新的偏差校正GWR应用中,结果揭示了两个高风险区域:市中心商业区和经济和种族边缘化的东区。通过两种方式(总体频率和每500名妇女)探索强奸的空间预测因素,我们研究了空间主要是如何被用来工作、访问或居住的。关键预测指标包括:白人百分比、家庭收入中位数、总人口和空置建筑百分比。然而,这些预测因素在整个城市中并不统一,根据社区的不同,有些影响更大、相反或不显著。研究方法上的进步包括对流行空间数据的估计进行偏差修正,并允许预测因子因地区而异(GWR),强调强奸预测因子在不同地区的作用不同。研究结果揭示了高风险地区、强奸的空间预测因素以及这些因素在不同地区的差异,为改善建筑环境以帮助减少或预防强奸提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neighborhood level predictors of rape: A novel spatial regression approach
Despite decades of research examining the relationship between space and crime, there is a paucity investigating space and rape specifically. This study fills this gap by exploring the spatial clustering and neighborhood-level predictors of rape measured at the census tract level via geographically weighted regression (GWR) in Cleveland, Ohio (U.S.) over two years. In a novel application of bias-corrected GWR, results reveal two high-risk areas: the downtown business district and the economically and racially marginalized east side. By exploring spatial predictors of rape in two ways (overall frequency and per 500 women), we examine how the space is primarily used—to work, visit, or reside. Key predictors include: percent White, median household income, total population, and percent vacant buildings. However, these predictors are not uniform across the city, with some having larger, inverse, or non-significant effects depending on the neighborhood. Study's methodological advances include applying bias corrections to estimates from popular spatial data and allowing predictors to vary by tract (GWR), highlighting that rape predictors function differently in different areas. Findings provide insights into high-risk areas, spatial predictors of rape, and how these vary by tract, offering guidance on modifying the built environment to help reduce or prevent rape.
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来源期刊
Journal of Criminal Justice
Journal of Criminal Justice CRIMINOLOGY & PENOLOGY-
CiteScore
6.90
自引率
9.10%
发文量
93
审稿时长
23 days
期刊介绍: The Journal of Criminal Justice is an international journal intended to fill the present need for the dissemination of new information, ideas and methods, to both practitioners and academicians in the criminal justice area. The Journal is concerned with all aspects of the criminal justice system in terms of their relationships to each other. Although materials are presented relating to crime and the individual elements of the criminal justice system, the emphasis of the Journal is to tie together the functioning of these elements and to illustrate the effects of their interactions. Articles that reflect the application of new disciplines or analytical methodologies to the problems of criminal justice are of special interest. Since the purpose of the Journal is to provide a forum for the dissemination of new ideas, new information, and the application of new methods to the problems and functions of the criminal justice system, the Journal emphasizes innovation and creative thought of the highest quality.
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