Analysing non-linearities and threshold effects between street-level built environments and local crime patterns: An interpretable machine learning approach

IF 4.2 1区 经济学 Q1 ENVIRONMENTAL STUDIES Urban Studies Pub Date : 2024-09-27 DOI:10.1177/00420980241270948
Sugie Lee, Donghwan Ki, John R Hipp, Jae Hong Kim
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Abstract

Despite the substantial number of studies on the relationships between crime patterns and built environments, the impacts of street-level built environments on crime patterns have not been definitively determined due to the limitations of obtaining detailed streetscape data and conventional analysis models. To fill these gaps, this study focuses on the non-linear relationships and threshold effects between built environments and local crime patterns at the level of a street segment in the City of Santa Ana, California. Using Google Street View (GSV) and semantic segmentation techniques, we quantify the features of the built environment in GSV images. Then, we examine the non-linear relationships and threshold effects between built environment factors and crime by applying interpretable machine learning (IML) methods. While the machine learning models, especially Deep Neural Network (DNN), outperformed negative binomial regression in predicting future crime events, particularly advantageous was that they allowed us to obtain a deeper understanding of the complex relationship between crime patterns and environmental factors. The results of interpreting the DNN model through IML indicate that most streetscape elements showed non-linear relationships and threshold effects with crime patterns that cannot be easily captured by conventional regression model specifications. The non-linearities and threshold effects revealed in this study can shed light on the factors associated with crime patterns and contribute to policy development for public safety from crime.
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分析街道建筑环境与当地犯罪模式之间的非线性和阈值效应:可解释的机器学习方法
尽管对犯罪模式与建筑环境之间的关系进行了大量研究,但由于获取详细街景数据和传统分析模型的局限性,尚未明确确定街道层面的建筑环境对犯罪模式的影响。为了填补这些空白,本研究侧重于加利福尼亚州圣安娜市街道层面的建筑环境与当地犯罪模式之间的非线性关系和阈值效应。利用谷歌街景(GSV)和语义分割技术,我们量化了 GSV 图像中的建筑环境特征。然后,我们通过应用可解释机器学习(IML)方法来研究建筑环境因素与犯罪之间的非线性关系和阈值效应。机器学习模型,尤其是深度神经网络(DNN),在预测未来犯罪事件方面的表现优于负二项回归,尤其是其优势使我们能够更深入地了解犯罪模式与环境因素之间的复杂关系。通过 IML 对 DNN 模型进行解释的结果表明,大多数街景要素与犯罪模式之间存在非线性关系和阈值效应,而传统的回归模型规格无法轻松捕捉到这些关系和效应。本研究揭示的非线性关系和阈值效应可以揭示与犯罪模式相关的因素,并有助于制定犯罪公共安全政策。
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来源期刊
Urban Studies
Urban Studies Multiple-
CiteScore
10.50
自引率
8.50%
发文量
150
期刊介绍: Urban Studies was first published in 1964 to provide an international forum of social and economic contributions to the fields of urban and regional planning. Since then, the Journal has expanded to encompass the increasing range of disciplines and approaches that have been brought to bear on urban and regional problems. Contents include original articles, notes and comments, and a comprehensive book review section. Regular contributions are drawn from the fields of economics, planning, political science, statistics, geography, sociology, population studies and public administration.
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