Drug-related crimes have become a common worldwide concern, and studies have considered the influence of different types of land use on such crimes. However, the dynamic visitor flow rate has rarely been taken into consideration when analyzing the cause of drug-related crimes, with most studies only using static population distribution data. Differences between the main factors associated with drug-related crimes on different streets have also rarely been discussed. In this study, the spatial distribution of and factors associated with drug-related crimes were explored from the perspective of residents’daily activities, and the main factors associated with such crimes on different streets were compared and analyzed. The results indicate that drug-related crimes are characterized by significant spatial heterogeneity and clustering; the spatial distribution of drug-related crimes is closely correlated with places of resident activity. More specifically, the denser the distribution of restaurant services and recreational facilities (e.g., cyber cafes and bars) on a street, the more likely drug-related crimes are to occur there. Drug-related crimes on different streets are associated with different factors those on commercial-oriented streets are mainly distributed in areas with dense restaurant services and recreational facilities, while those on streets dominated by industrial parks, residential areas, and woodlands primarily occur where there are high-density traffic facilities and cyber cafes or areas with a high visitor flow rate.
Published in | Social Sciences (Volume 10, Issue 3) |
DOI | 10.11648/j.ss.20211003.14 |
Page(s) | 101-112 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2021. Published by Science Publishing Group |
Drug-Related Crimes, Land Use Type, Dynamic Visitor Flow Rate, Crime Geography
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APA Style
Yimeng Liu, Weihong Li, Guoqing Liu, Xiaorui Yang, Yunjian Guo, et al. (2021). Influence of Places of Resident Activities on Spatial Distribution of Drug-Related Crimes. Social Sciences, 10(3), 101-112. https://doi.org/10.11648/j.ss.20211003.14
ACS Style
Yimeng Liu; Weihong Li; Guoqing Liu; Xiaorui Yang; Yunjian Guo, et al. Influence of Places of Resident Activities on Spatial Distribution of Drug-Related Crimes. Soc. Sci. 2021, 10(3), 101-112. doi: 10.11648/j.ss.20211003.14
AMA Style
Yimeng Liu, Weihong Li, Guoqing Liu, Xiaorui Yang, Yunjian Guo, et al. Influence of Places of Resident Activities on Spatial Distribution of Drug-Related Crimes. Soc Sci. 2021;10(3):101-112. doi: 10.11648/j.ss.20211003.14
@article{10.11648/j.ss.20211003.14, author = {Yimeng Liu and Weihong Li and Guoqing Liu and Xiaorui Yang and Yunjian Guo and Kewen Zhang}, title = {Influence of Places of Resident Activities on Spatial Distribution of Drug-Related Crimes}, journal = {Social Sciences}, volume = {10}, number = {3}, pages = {101-112}, doi = {10.11648/j.ss.20211003.14}, url = {https://doi.org/10.11648/j.ss.20211003.14}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ss.20211003.14}, abstract = {Drug-related crimes have become a common worldwide concern, and studies have considered the influence of different types of land use on such crimes. However, the dynamic visitor flow rate has rarely been taken into consideration when analyzing the cause of drug-related crimes, with most studies only using static population distribution data. Differences between the main factors associated with drug-related crimes on different streets have also rarely been discussed. In this study, the spatial distribution of and factors associated with drug-related crimes were explored from the perspective of residents’daily activities, and the main factors associated with such crimes on different streets were compared and analyzed. The results indicate that drug-related crimes are characterized by significant spatial heterogeneity and clustering; the spatial distribution of drug-related crimes is closely correlated with places of resident activity. More specifically, the denser the distribution of restaurant services and recreational facilities (e.g., cyber cafes and bars) on a street, the more likely drug-related crimes are to occur there. Drug-related crimes on different streets are associated with different factors those on commercial-oriented streets are mainly distributed in areas with dense restaurant services and recreational facilities, while those on streets dominated by industrial parks, residential areas, and woodlands primarily occur where there are high-density traffic facilities and cyber cafes or areas with a high visitor flow rate.}, year = {2021} }
TY - JOUR T1 - Influence of Places of Resident Activities on Spatial Distribution of Drug-Related Crimes AU - Yimeng Liu AU - Weihong Li AU - Guoqing Liu AU - Xiaorui Yang AU - Yunjian Guo AU - Kewen Zhang Y1 - 2021/05/31 PY - 2021 N1 - https://doi.org/10.11648/j.ss.20211003.14 DO - 10.11648/j.ss.20211003.14 T2 - Social Sciences JF - Social Sciences JO - Social Sciences SP - 101 EP - 112 PB - Science Publishing Group SN - 2326-988X UR - https://doi.org/10.11648/j.ss.20211003.14 AB - Drug-related crimes have become a common worldwide concern, and studies have considered the influence of different types of land use on such crimes. However, the dynamic visitor flow rate has rarely been taken into consideration when analyzing the cause of drug-related crimes, with most studies only using static population distribution data. Differences between the main factors associated with drug-related crimes on different streets have also rarely been discussed. In this study, the spatial distribution of and factors associated with drug-related crimes were explored from the perspective of residents’daily activities, and the main factors associated with such crimes on different streets were compared and analyzed. The results indicate that drug-related crimes are characterized by significant spatial heterogeneity and clustering; the spatial distribution of drug-related crimes is closely correlated with places of resident activity. More specifically, the denser the distribution of restaurant services and recreational facilities (e.g., cyber cafes and bars) on a street, the more likely drug-related crimes are to occur there. Drug-related crimes on different streets are associated with different factors those on commercial-oriented streets are mainly distributed in areas with dense restaurant services and recreational facilities, while those on streets dominated by industrial parks, residential areas, and woodlands primarily occur where there are high-density traffic facilities and cyber cafes or areas with a high visitor flow rate. VL - 10 IS - 3 ER -