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Analysis and description of crimes in Mexico City using point pattern analysis within networks

Analysis and description of crimes in Mexico City using point pattern analysis within networks
Analysis and description of crimes in Mexico City using point pattern analysis within networks
The present research work is conducted to analyse spatial distribution and possible spatial association between three types of crimes from January 2018 to December 2019 in the metropolitan area of Mexico City. In this study, we consider treating the data as a realization of spatial point processes precisely on street network and propose an equal split continuous kernel estimator to identify particular street segments with higher crime rates than neighbouring segments. The results identify the location of high-risk areas for different kind of crimes and permit to detect individual street where crime rate is higher than the average rate. Additionally, our analysis reveals the existence of clusters with high crime incidence running eastwest across the central part of the urban study area. In that context, the current study suggests a comprehensive overview of road safety metrices for public security system and has important implications for strategic law enforcement. The methodology can be adapted and applied to other urban locations globally.
1947-5683
243-259
Vlad, Iulian Teodor
6f28ed77-714b-4c4d-8e50-2dd7c7e4b1f6
Diaz, Carlos
c3d206d1-9a32-4e8c-88ab-0b7f2cb18e30
Juan, Pablo
f3648398-5752-4dd0-9410-835566b659f4
Chaudhuri, Somnath
ae0507e0-f920-4438-bc9f-ecdd5ac8967a
Vlad, Iulian Teodor
6f28ed77-714b-4c4d-8e50-2dd7c7e4b1f6
Diaz, Carlos
c3d206d1-9a32-4e8c-88ab-0b7f2cb18e30
Juan, Pablo
f3648398-5752-4dd0-9410-835566b659f4
Chaudhuri, Somnath
ae0507e0-f920-4438-bc9f-ecdd5ac8967a

Vlad, Iulian Teodor, Diaz, Carlos, Juan, Pablo and Chaudhuri, Somnath (2023) Analysis and description of crimes in Mexico City using point pattern analysis within networks. Annals of GIS, 29 (2), 243-259. (doi:10.1080/19475683.2023.2166108).

Record type: Article

Abstract

The present research work is conducted to analyse spatial distribution and possible spatial association between three types of crimes from January 2018 to December 2019 in the metropolitan area of Mexico City. In this study, we consider treating the data as a realization of spatial point processes precisely on street network and propose an equal split continuous kernel estimator to identify particular street segments with higher crime rates than neighbouring segments. The results identify the location of high-risk areas for different kind of crimes and permit to detect individual street where crime rate is higher than the average rate. Additionally, our analysis reveals the existence of clusters with high crime incidence running eastwest across the central part of the urban study area. In that context, the current study suggests a comprehensive overview of road safety metrices for public security system and has important implications for strategic law enforcement. The methodology can be adapted and applied to other urban locations globally.

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Accepted/In Press date: 2 January 2023
Published date: 7 February 2023
Additional Information: A correction to this research output can be found at: https://doi.org/10.1080/19475683.2023.2221591

Identifiers

Local EPrints ID: 502896
URI: http://eprints.soton.ac.uk/id/eprint/502896
ISSN: 1947-5683
PURE UUID: e385a0a6-f6bc-48b0-a20e-7c388fe05c65
ORCID for Somnath Chaudhuri: ORCID iD orcid.org/0000-0003-4899-1870

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Date deposited: 11 Jul 2025 16:33
Last modified: 22 Aug 2025 02:43

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Contributors

Author: Iulian Teodor Vlad
Author: Carlos Diaz
Author: Pablo Juan
Author: Somnath Chaudhuri ORCID iD

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