Disentangling community-level changes in crime trends during the COVID-19 pandemic in Chicago.

IF 3.1 Q1 CRIMINOLOGY & PENOLOGY
Crime Science Pub Date : 2020-01-01 Epub Date: 2020-10-27 DOI:10.1186/s40163-020-00131-8
Gian Maria Campedelli, Serena Favarin, Alberto Aziani, Alex R Piquero
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引用次数: 85

Abstract

Recent studies exploiting city-level time series have shown that, around the world, several crimes declined after COVID-19 containment policies have been put in place. Using data at the community-level in Chicago, this work aims to advance our understanding on how public interventions affected criminal activities at a finer spatial scale. The analysis relies on a two-step methodology. First, it estimates the community-wise causal impact of social distancing and shelter-in-place policies adopted in Chicago via Structural Bayesian Time-Series across four crime categories (i.e., burglary, assault, narcotics-related offenses, and robbery). Once the models detected the direction, magnitude and significance of the trend changes, Firth's Logistic Regression is used to investigate the factors associated to the statistically significant crime reduction found in the first step of the analyses. Statistical results first show that changes in crime trends differ across communities and crime types. This suggests that beyond the results of aggregate models lies a complex picture characterized by diverging patterns. Second, regression models provide mixed findings regarding the correlates associated with significant crime reduction: several relations have opposite directions across crimes with population being the only factor that is stably and positively associated with significant crime reduction.

解开芝加哥COVID-19大流行期间社区层面犯罪趋势的变化。
最近利用城市时间序列进行的研究表明,在全球范围内,在COVID-19遏制政策实施后,有几种犯罪有所下降。利用芝加哥社区层面的数据,这项工作旨在促进我们对公共干预如何在更精细的空间尺度上影响犯罪活动的理解。该分析依赖于两步方法。首先,它通过结构贝叶斯时间序列估计了芝加哥采用的社会距离和庇护政策对社区的因果影响,这些政策涉及四种犯罪类别(即入室盗窃、袭击、毒品相关犯罪和抢劫)。一旦模型检测到趋势变化的方向、幅度和重要性,Firth的逻辑回归就被用来调查与第一步分析中发现的统计上显著的犯罪减少有关的因素。统计结果首先表明,不同社区和犯罪类型的犯罪趋势的变化有所不同。这表明,在综合模型的结果之外,存在着一个以发散模式为特征的复杂图景。其次,回归模型提供了与显著减少犯罪相关的混合结果:几种关系在犯罪之间具有相反的方向,人口是唯一与显著减少犯罪稳定和积极相关的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Crime Science
Crime Science Social Sciences-Cultural Studies
CiteScore
11.90
自引率
8.20%
发文量
12
审稿时长
13 weeks
期刊介绍: Crime Science is an international, interdisciplinary, peer-reviewed journal with an applied focus. The journal''s main focus is on research articles and systematic reviews that reflect the growing cooperation among a variety of fields, including environmental criminology, economics, engineering, geography, public health, psychology, statistics and urban planning, on improving the detection, prevention and understanding of crime and disorder. Crime Science will publish theoretical articles that are relevant to the field, for example, approaches that integrate theories from different disciplines. The goal of the journal is to broaden the scientific base for the understanding, analysis and control of crime and disorder. It is aimed at researchers, practitioners and policy-makers with an interest in crime reduction. It will also publish short contributions on timely topics including crime patterns, technological advances for detection and prevention, and analytical techniques, and on the crime reduction applications of research from a wide range of fields. Crime Science publishes research articles, systematic reviews, short contributions and theoretical articles. While Crime Science uses the APA reference style, the journal welcomes submissions using alternative reference styles on a case-by-case basis.
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