利用登记册和 OpenStreetMap 数据预测公共暴力犯罪:跨越三个不同规模城市的风险地形建模方法

IF 2 4区 社会学 Q3 ENVIRONMENTAL STUDIES
Karl Kronkvist, Anton Borg, Martin Boldt, Manne Gerell
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引用次数: 0

摘要

本研究的目的是估算 OpenStreetMap (OSM) 中关于地点特征的空间数据是否能产生与使用登记数据预测瑞典三个不同规模城市未来公共场所暴力犯罪相似的结果。以公共场所暴力犯罪为结果,使用风险地形建模方法为每个城市建立了四个模型。一个模型使用登记数据中的地点特征空间数据,另一个使用 OSM 数据,一个模型不包括之前的暴力犯罪,另一个模型包括之前的犯罪。结果表明,无论使用登记数据还是 OSM 数据作为输入,一些地方特征都与公共场所的暴力犯罪有显著关联。对于两个较小的城市,使用登记册数据的模型似乎比 OSM 数据的预测更准确、更有效,但对于最大的城市,两者之间的差异可以忽略不计,这表明这些模型提供了相似的结果。因此,在预测未来公共场所暴力犯罪的空间分布时,OSM地点特征数据可能很有价值,并能提供与使用登记册数据类似的结果,至少在大城市与小城市中使用时是如此。本文讨论了在基于地点的犯罪学研究中使用 OSM 数据的可能性、局限性和未来研究的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Public Violent Crime Using Register and OpenStreetMap Data: A Risk Terrain Modeling Approach Across Three Cities of Varying Size

The aim of the current study is to estimate whether spatial data on place features from OpenStreetMap (OSM) produce results similar to those when employing register data to predict future violent crime in public across three Swedish cities of varying sizes. Using violent crime in public as an outcome, four models for each city are produced using a Risk Terrain Modeling approach. One using spatial data on place features from register data and one from OSM, one model with prior violent crime excluded and one with prior crime included. The results show that several place features are significantly associated with violent crime in public independent of using register or OSM data as input. While models using register data seem to produce more accurate and efficient predictions than OSM data for the two smaller cities, the difference for the largest city is negligible indicating that the models provide similar results. As such, OSM place feature data may be of value when predicting the spatial distribution of future violent crime in public and provide results similar to those when using register data, at least when employed in larger compared to smaller cities. Possibilities, limitations, and avenues for future research when using OSM data in place-based criminological research are discussed.

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来源期刊
CiteScore
3.80
自引率
5.30%
发文量
57
期刊介绍: Description The journal has an applied focus: it actively promotes the importance of geographical research in real world settings It is policy-relevant: it seeks both a readership and contributions from practitioners as well as academics The substantive foundation is spatial analysis: the use of quantitative techniques to identify patterns and processes within geographic environments The combination of these points, which are fully reflected in the naming of the journal, establishes a unique position in the marketplace. RationaleA geographical perspective has always been crucial to the understanding of the social and physical organisation of the world around us. The techniques of spatial analysis provide a powerful means for the assembly and interpretation of evidence, and thus to address critical questions about issues such as crime and deprivation, immigration and demographic restructuring, retailing activity and employment change, resource management and environmental improvement. Many of these issues are equally important to academic research as they are to policy makers and Applied Spatial Analysis and Policy aims to close the gap between these two perspectives by providing a forum for discussion of applied research in a range of different contexts  Topical and interdisciplinaryIncreasingly government organisations, administrative agencies and private businesses are requiring research to support their ‘evidence-based’ strategies or policies. Geographical location is critical in much of this work which extends across a wide range of disciplines including demography, actuarial sciences, statistics, public sector planning, business planning, economics, epidemiology, sociology, social policy, health research, environmental management.   FocusApplied Spatial Analysis and Policy will draw on applied research from diverse problem domains, such as transport, policing, education, health, environment and leisure, in different international contexts. The journal will therefore provide insights into the variations in phenomena that exist across space, it will provide evidence for comparative policy analysis between domains and between locations, and stimulate ideas about the translation of spatial analysis methods and techniques across varied policy contexts. It is essential to know how to measure, monitor and understand spatial distributions, many of which have implications for those with responsibility to plan and enhance the society and the environment in which we all exist.   Readership and Editorial BoardAs a journal focused on applications of methods of spatial analysis, Applied Spatial Analysis and Policy will be of interest to scholars and students in a wide range of academic fields, to practitioners in government and administrative agencies and to consultants in private sector organisations. The Editorial Board reflects the international and multidisciplinary nature of the journal.
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