Crime Prediction Using Machine Learning and Deep Learning: A Systematic
Review and Future Directions
- URL: http://arxiv.org/abs/2303.16310v1
- Date: Tue, 28 Mar 2023 21:07:42 GMT
- Title: Crime Prediction Using Machine Learning and Deep Learning: A Systematic
Review and Future Directions
- Authors: Varun Mandalapu, Lavanya Elluri, Piyush Vyas and Nirmalya Roy
- Abstract summary: This review paper examines over 150 articles to explore the various machine learning and deep learning algorithms applied to predict crime.
The study provides access to the datasets used for crime prediction by researchers.
The paper highlights potential gaps and future directions that can enhance the accuracy of crime prediction.
- Score: 2.624902795082451
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Predicting crime using machine learning and deep learning techniques has
gained considerable attention from researchers in recent years, focusing on
identifying patterns and trends in crime occurrences. This review paper
examines over 150 articles to explore the various machine learning and deep
learning algorithms applied to predict crime. The study provides access to the
datasets used for crime prediction by researchers and analyzes prominent
approaches applied in machine learning and deep learning algorithms to predict
crime, offering insights into different trends and factors related to criminal
activities. Additionally, the paper highlights potential gaps and future
directions that can enhance the accuracy of crime prediction. Finally, the
comprehensive overview of research discussed in this paper on crime prediction
using machine learning and deep learning approaches serves as a valuable
reference for researchers in this field. By gaining a deeper understanding of
crime prediction techniques, law enforcement agencies can develop strategies to
prevent and respond to criminal activities more effectively.
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