Predictive Crime Data Analysis and Visualization Using Machine Learning Techniques

Authors

  • JADDU NAGA MURALI, K. Rambabu Author

DOI:

https://doi.org/10.64751/

Keywords:

Crime Prediction, Predictive Policing, Machine Learning, Data Visualization, Supervised Learning, Random Forest Classifier, Predictive Modeling, Geospatial Analysis, Django Framework.

Abstract

The rapid global population growth and expansive urbanization have inadvertently contributed to an escalation and diversification of crime rates globally. Law enforcement agencies generate massive volumes of daily incident reports, logging timestamps, geographical locations, types of crimes, and demographic details. However, storing this data in traditional Record Management Systems (RMS) only serves administrative purposes and fails to extract actionable, predictive intelligence. This study presents a comprehensive, web-based "Predictive Crime Data Analysis" application specifically engineered to bridge the gap between historical crime data accumulation and proactive crime prevention.By leveraging advanced exploratory data analysis (EDA) and supervised Machine Learning (ML), our proposed system can ingest spatiotemporal parameters—such as the day of the week and specific districts/neighborhoods—to predict the statistical likelihood of 39 distinct crime categories ranging from Arson and Assault to Burglary and Vehicle Theft. Our system utilizes trained serialization models designed to output probability distribution arrays, essentially ranking the most probable crimes for a queried region in real-time.Furthermore, this intelligence platform acts as an interactive portal built on the Django web framework. It provides authenticated law enforcement users (police login) a centralized dashboard to track case progression, file new complaints safely into database models, and visualize geospatial historical trends. Integrating interactive visual libraries like FusionCharts and Plotly, the software offers a deep subgroup analysis framework tracking crime against women (e.g., analyzing rape cases chronologically across varying regions). Ultimately, this solution transforms raw, dormant police reports into a dynamic prediction mechanism, offering police personnel a highly accessible, intelligence-led policing instrument for strategic resource and patrol allocation.

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Published

2026-04-06

How to Cite

JADDU NAGA MURALI, K. Rambabu. (2026). Predictive Crime Data Analysis and Visualization Using Machine Learning Techniques. International Journal of Data Science and IoT Management System, 5(2), 823-834. https://doi.org/10.64751/

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