{"title":"犯罪的社会和空间邻近性建模:邻里间的家庭暴力和性暴力。","authors":"Claire Kelling, Corina Graif, Gizem Korkmaz, Murali Haran","doi":"10.1007/s10940-020-09454-w","DOIUrl":null,"url":null,"abstract":"<p><strong>Objectives: </strong>Our goal is to understand the social dynamics affecting domestic and sexual violence in urban areas by investigating the role of connections between area nodes, or communities. We use innovative methods adapted from spatial statistics to investigate the importance of social proximity measured based on connectedness pathways between area nodes. In doing so, we seek to extend the standard treatment in the neighborhoods and crime literature of areas like census blocks as independent analytical units or as interdependent primarily due to geographic proximity.</p><p><strong>Methods: </strong>In this paper, we develop techniques to incorporate two types of proximity, geographic proximity and commuting proximity in spatial generalized linear mixed models (SGLMM) in order to estimate domestic and sexual violence in Detroit, Michigan and Arlington County, Virginia. Analyses are based on three types of CAR models (the Besag, York, and Mollié (BYM), Leroux, and the sparse SGLMM models) and two types of SAR models (the spatial lag and spatial error models) to examine how results vary with different model assumptions. We use data from local and federal sources such as the Police Data Initiative and American Community Survey.</p><p><strong>Results: </strong>Analyses show that incorporating information on commuting ties, a non-spatially bounded form of social proximity, to spatial models contributes to better deviance information criteria (DIC) scores (a metric which explicitly accounts for model fit and complexity) in Arlington for sexual and domestic crime as well as overall crime. In Detroit, the fit is improved only for overall crime. The distinctions in model fit are less pronounced when using cross-validated mean absolute error (MAE) as a comparison criteria.</p><p><strong>Conclusion: </strong>Overall, the results indicate variations across crime type, urban contexts, and modeling approaches. Nonetheless, in important contexts, commuting ties among neighborhoods are observed to greatly improve our understanding of urban crime. If such ties contribute to the transfer of norms, social support, resources, and behaviors between places, they may then transfer also the effects of crime prevention efforts.</p>","PeriodicalId":48080,"journal":{"name":"Journal of Quantitative Criminology","volume":"37 2","pages":"481-516"},"PeriodicalIF":2.8000,"publicationDate":"2021-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8210633/pdf/nihms-1580687.pdf","citationCount":"0","resultStr":"{\"title\":\"Modeling the Social and Spatial Proximity of Crime: Domestic and Sexual Violence Across Neighborhoods.\",\"authors\":\"Claire Kelling, Corina Graif, Gizem Korkmaz, Murali Haran\",\"doi\":\"10.1007/s10940-020-09454-w\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objectives: </strong>Our goal is to understand the social dynamics affecting domestic and sexual violence in urban areas by investigating the role of connections between area nodes, or communities. We use innovative methods adapted from spatial statistics to investigate the importance of social proximity measured based on connectedness pathways between area nodes. In doing so, we seek to extend the standard treatment in the neighborhoods and crime literature of areas like census blocks as independent analytical units or as interdependent primarily due to geographic proximity.</p><p><strong>Methods: </strong>In this paper, we develop techniques to incorporate two types of proximity, geographic proximity and commuting proximity in spatial generalized linear mixed models (SGLMM) in order to estimate domestic and sexual violence in Detroit, Michigan and Arlington County, Virginia. Analyses are based on three types of CAR models (the Besag, York, and Mollié (BYM), Leroux, and the sparse SGLMM models) and two types of SAR models (the spatial lag and spatial error models) to examine how results vary with different model assumptions. We use data from local and federal sources such as the Police Data Initiative and American Community Survey.</p><p><strong>Results: </strong>Analyses show that incorporating information on commuting ties, a non-spatially bounded form of social proximity, to spatial models contributes to better deviance information criteria (DIC) scores (a metric which explicitly accounts for model fit and complexity) in Arlington for sexual and domestic crime as well as overall crime. In Detroit, the fit is improved only for overall crime. The distinctions in model fit are less pronounced when using cross-validated mean absolute error (MAE) as a comparison criteria.</p><p><strong>Conclusion: </strong>Overall, the results indicate variations across crime type, urban contexts, and modeling approaches. Nonetheless, in important contexts, commuting ties among neighborhoods are observed to greatly improve our understanding of urban crime. 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引用次数: 0
摘要
目标:我们的目标是通过研究地区节点(或社区)之间联系的作用,了解影响城市地区家庭暴力和性暴力的社会动态。我们采用从空间统计学中改编而来的创新方法,根据区域节点之间的连接路径来衡量社会接近性的重要性。在此过程中,我们试图扩展邻里和犯罪文献中对人口普查区等区域的标准处理,将其作为独立的分析单位或主要由于地理上的邻近性而相互依存:在本文中,我们开发了在空间广义线性混合模型(SGLMM)中纳入地理邻近性和通勤邻近性这两种邻近性的技术,以估算密歇根州底特律市和弗吉尼亚州阿灵顿县的家庭暴力和性暴力情况。分析基于三种 CAR 模型(Besag、York 和 Mollié (BYM)、Leroux 和稀疏 SGLMM 模型)和两种 SAR 模型(空间滞后模型和空间误差模型),以考察不同模型假设下的结果差异。我们使用的数据来自地方和联邦来源,如警察数据倡议和美国社区调查:分析表明,在阿灵顿的性犯罪和家庭犯罪以及总体犯罪中,将通勤联系(一种非空间界限的社会接近形式)信息纳入空间模型有助于获得更好的偏差信息标准(DIC)分数(一种明确考虑模型拟合度和复杂性的指标)。在底特律,只有总体犯罪的拟合度有所提高。以交叉验证的平均绝对误差(MAE)作为比较标准时,模型拟合度的差异并不明显:总体而言,研究结果表明了不同犯罪类型、城市环境和建模方法之间的差异。尽管如此,在一些重要的情况下,我们观察到邻里之间的通勤联系大大提高了我们对城市犯罪的理解。如果这种联系有助于规范、社会支持、资源和行为在不同地方之间的传递,那么它们也可能传递预防犯罪工作的效果。
Modeling the Social and Spatial Proximity of Crime: Domestic and Sexual Violence Across Neighborhoods.
Objectives: Our goal is to understand the social dynamics affecting domestic and sexual violence in urban areas by investigating the role of connections between area nodes, or communities. We use innovative methods adapted from spatial statistics to investigate the importance of social proximity measured based on connectedness pathways between area nodes. In doing so, we seek to extend the standard treatment in the neighborhoods and crime literature of areas like census blocks as independent analytical units or as interdependent primarily due to geographic proximity.
Methods: In this paper, we develop techniques to incorporate two types of proximity, geographic proximity and commuting proximity in spatial generalized linear mixed models (SGLMM) in order to estimate domestic and sexual violence in Detroit, Michigan and Arlington County, Virginia. Analyses are based on three types of CAR models (the Besag, York, and Mollié (BYM), Leroux, and the sparse SGLMM models) and two types of SAR models (the spatial lag and spatial error models) to examine how results vary with different model assumptions. We use data from local and federal sources such as the Police Data Initiative and American Community Survey.
Results: Analyses show that incorporating information on commuting ties, a non-spatially bounded form of social proximity, to spatial models contributes to better deviance information criteria (DIC) scores (a metric which explicitly accounts for model fit and complexity) in Arlington for sexual and domestic crime as well as overall crime. In Detroit, the fit is improved only for overall crime. The distinctions in model fit are less pronounced when using cross-validated mean absolute error (MAE) as a comparison criteria.
Conclusion: Overall, the results indicate variations across crime type, urban contexts, and modeling approaches. Nonetheless, in important contexts, commuting ties among neighborhoods are observed to greatly improve our understanding of urban crime. If such ties contribute to the transfer of norms, social support, resources, and behaviors between places, they may then transfer also the effects of crime prevention efforts.
期刊介绍:
The Journal of Quantitative Criminology focuses on research advances from such fields as statistics, sociology, geography, political science, economics, and engineering. This timely journal publishes papers that apply quantitative techniques of all levels of complexity to substantive, methodological, or evaluative concerns of interest to the criminological community. Features include original research, brief methodological critiques, and papers that explore new directions for studying a broad range of criminological topics.