Advanced search
2 files | 910.41 KB Add to list

Mapping police officers’ anticipated experiences and attitudes towards place-based big data policing

Naomi Theinert (UGent) , Thom Snaphaan (UGent) , Robin Khalfa (UGent) , Marlies Sas (UGent) , Charlotte Vandenbrande and Wim Hardyns (UGent)
Author
Organization
Project
Abstract
Over the past decades, law enforcement agencies have increasingly adopted big data and advanced analytical methods, including machine learning and artificial intelligence (AI), to inform their crime prevention strategies. Specific applications beyond the broader concept of big data policing, such as place-based big data policing, focus on the use of big data analytics to enhance insight into where and when crime is more likely to occur, thereby improving both strategic and tactical decision-making. Despite advancements, limited research explores police officers’ anticipated experiences, self-reported knowledge and ethical considerations regarding these technologies prior to their implementation, particularly outside the United States. Yet these insights are relevant for the design and implementation of applications. This study addresses that gap in pre-implementation research by evaluating survey data from 522 police officers across 20 Flemish police departments, offering insights into their attitudes, knowledge and ethical considerations regarding place-based big data policing, prior to a large-scale field test. Notably, findings indicate small but significant differences on the basis of police officers’ position, suggesting that expectations are shaped by existing technological and organizational frames. To ensure that practical and ethical needs of novel applications are met, this study highlights how end-user perspectives can inform implementation processes, for instance through socio-technical system’s design frameworks.
Keywords
Big data policing, predictive policing, spatiotemporal, crime prevention, end-user perspectives, new technologies, ethics, socio-technical contexts

Downloads

  • (...).pdf
    • full text (Published version)
    • |
    • UGent only
    • |
    • PDF
    • |
    • 454.33 KB
  • (...).pdf
    • full text (Accepted manuscript)
    • |
    • UGent only (changes to open access on 2026-10-01)
    • |
    • PDF
    • |
    • 456.08 KB

Citation

Please use this url to cite or link to this publication:

MLA
Theinert, Naomi, et al. “Mapping Police Officers’ Anticipated Experiences and Attitudes towards Place-Based Big Data Policing.” EUROPEAN JOURNAL OF POLICING STUDIES, vol. 8, no. 3, 2025, pp. 157–91, doi:10.5553/EJPS.000036.
APA
Theinert, N., Snaphaan, T., Khalfa, R., Sas, M., Vandenbrande, C., & Hardyns, W. (2025). Mapping police officers’ anticipated experiences and attitudes towards place-based big data policing. EUROPEAN JOURNAL OF POLICING STUDIES, 8(3), 157–191. https://doi.org/10.5553/EJPS.000036
Chicago author-date
Theinert, Naomi, Thom Snaphaan, Robin Khalfa, Marlies Sas, Charlotte Vandenbrande, and Wim Hardyns. 2025. “Mapping Police Officers’ Anticipated Experiences and Attitudes towards Place-Based Big Data Policing.” EUROPEAN JOURNAL OF POLICING STUDIES 8 (3): 157–91. https://doi.org/10.5553/EJPS.000036.
Chicago author-date (all authors)
Theinert, Naomi, Thom Snaphaan, Robin Khalfa, Marlies Sas, Charlotte Vandenbrande, and Wim Hardyns. 2025. “Mapping Police Officers’ Anticipated Experiences and Attitudes towards Place-Based Big Data Policing.” EUROPEAN JOURNAL OF POLICING STUDIES 8 (3): 157–191. doi:10.5553/EJPS.000036.
Vancouver
1.
Theinert N, Snaphaan T, Khalfa R, Sas M, Vandenbrande C, Hardyns W. Mapping police officers’ anticipated experiences and attitudes towards place-based big data policing. EUROPEAN JOURNAL OF POLICING STUDIES. 2025;8(3):157–91.
IEEE
[1]
N. Theinert, T. Snaphaan, R. Khalfa, M. Sas, C. Vandenbrande, and W. Hardyns, “Mapping police officers’ anticipated experiences and attitudes towards place-based big data policing,” EUROPEAN JOURNAL OF POLICING STUDIES, vol. 8, no. 3, pp. 157–191, 2025.
@article{01K8090G1S4DPPW5AG631NT50Q,
  abstract     = {{Over the past decades, law enforcement agencies have increasingly adopted big data and advanced analytical methods, including machine learning and artificial intelligence (AI), to inform their crime prevention strategies. Specific applications beyond the broader concept of big data policing, such as place-based big data policing, focus on the use of big data analytics to enhance insight into where and when crime is more likely to occur, thereby improving both strategic and tactical decision-making. Despite advancements, limited research explores police officers’ anticipated experiences, self-reported knowledge and ethical considerations regarding these technologies prior to their implementation, particularly outside the United States. Yet these insights are relevant for the design and implementation of applications. This study addresses that gap in pre-implementation research by evaluating survey data from 522 police officers across 20 Flemish police departments, offering insights into their attitudes, knowledge and ethical considerations regarding place-based big data policing, prior to a large-scale field test. Notably, findings indicate small but significant differences on the basis of police officers’ position, suggesting that expectations are shaped by existing technological and organizational frames. To ensure that practical and ethical needs of novel applications are met, this study highlights how end-user perspectives can inform implementation processes, for instance through socio-technical system’s design frameworks.}},
  author       = {{Theinert, Naomi and Snaphaan, Thom and Khalfa, Robin and Sas, Marlies and Vandenbrande, Charlotte and Hardyns, Wim}},
  issn         = {{3117-3101}},
  journal      = {{EUROPEAN JOURNAL OF POLICING STUDIES}},
  keywords     = {{Big data policing,predictive policing,spatiotemporal,crime prevention,end-user perspectives,new technologies,ethics,socio-technical contexts}},
  language     = {{eng}},
  number       = {{3}},
  pages        = {{157--191}},
  title        = {{Mapping police officers’ anticipated experiences and attitudes towards place-based big data policing}},
  url          = {{http://doi.org/10.5553/EJPS.000036}},
  volume       = {{8}},
  year         = {{2025}},
}

Altmetric
View in Altmetric