Assessing State-Dependent Crime Patterns in the USA: A Markov Chain Approach

Authors

  • Samuel T. Holloway Massachusetts Institute of Technology (MIT)
  • Ernest W. Reginald Massachusetts Institute of Technology (MIT)

DOI:

https://doi.org/10.53819/81018102t4151

Abstract

Understanding crime patterns in the USA can significantly contribute to effective policymaking and proactive law enforcement strategies. This study aims to utilize a novel method in the field of criminology - the Markov Chain model - to assess state-dependent crime patterns in the USA. The Markov Chain model, a mathematical system that undergoes transitions between different states based on certain probabilistic rules, provides an innovative approach to visualize and predict crime patterns. The application of this model enables us to make informed predictions about future crime rates based on current and historical data, thereby offering valuable insights into crime progression and recurrence. Data sourced from national and state-level crime databases forms the basis of this research. It is categorized into 'states' as per Markov Chain terminologies to represent different crime levels. The transitions between these states simulate the shifts in crime rates. The Markov Chain model is then implemented to map these transitions, yielding state-dependent crime patterns. Initial findings demonstrate a noteworthy degree of predictability in crime patterns, with variations in patterns across different states. Results also indicate that certain states have higher probabilities of experiencing increased crime rates, given their current state. Moreover, the model's ability to provide probabilistic predictions about future states may serve as a valuable tool for strategic planning in law enforcement. This research contributes significantly to the field by introducing a mathematical, probabilistic model to a largely sociological study area. It also has practical implications, as understanding these state-dependent crime patterns can enhance law enforcement efficiency and inform the development of targeted crime prevention strategies. Future studies may focus on refining the model, incorporating other socio-economic variables, and analyzing their impacts on crime transitions. This study thus opens up new avenues for employing mathematical models in criminology, demonstrating the vast potential of such interdisciplinary approaches.

Keywords: Markov Chain Model, Crime Patterns, State-Dependent Crime Rates, Predictive Policing, Probabilistic Crime Analysis

Author Biographies

Samuel T. Holloway , Massachusetts Institute of Technology (MIT)

The Department of Electrical Engineering and Computer Science

Ernest W. Reginald, Massachusetts Institute of Technology (MIT)

The Department of Electrical Engineering and Computer Science

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Published

2023-06-13 — Updated on 2023-06-26

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How to Cite

Holloway , S. T., & Reginald, E. W. (2023). Assessing State-Dependent Crime Patterns in the USA: A Markov Chain Approach. Journal of Information and Technology, 7(1), 1–12. https://doi.org/10.53819/81018102t4151 (Original work published June 13, 2023)

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Articles