Abstract
The analysis of crime rates has always been a critical component in shaping law enforcement strategies and public policy. This study focuses on the U.S. crime rates from 1975 to 2015, as reported by the FBI’s Uniform Crime Reporting (UCR) Program, to explore patterns and trends over four decades. By analyzing this extensive dataset, the project aims to provide insights into the dynamics of criminal activity across different regions and crime categories. The goal is to uncover both visible and hidden trends that can inform better decision-making in crime prevention and resource allocation. With the rise of data-driven methods, this project leverages machine learning techniques to dive deeper into the dataset than traditional statistical approaches. The primary method applied in this study is clustering, a machine learning technique that groups data points based on similarities, allowing for the discovery of patterns that may not be immediately apparent. By employing various clustering algorithms, such as K-means and hierarchical clustering, the analysis will reveal patterns in crime types and their geographical spread, while also identifying correlations. These insights could help in predicting future crime trends and developing more targeted crime prevention strategies, as well as improving the efficiency of resource allocation. Moreover, this project aims to go beyond merely identifying crime trends by addressing the complex crime types that contribute to changes in crime rates over time. Ultimately, the findings from this study will serve as a foundation for proposing new policies and intervention strategies aimed at reducing crime. In addition, the insights gained from clustering can guide future research, enhancing our understanding of crime as a multifaceted social issue that requires data driven solutions.
Publication Date
12-2024
Document Type
Thesis
Student Type
Graduate
Degree Name
Professional Studies (MS)
Department, Program, or Center
Graduate Programs & Research
Advisor
Sanjay Modak
Advisor/Committee Member
Ioannis Karamitsos
Recommended Citation
Alsoori, Dana, "Applying Machine Learning for Crime Trend Analysis" (2024). Thesis. Rochester Institute of Technology. Accessed from
https://repository.rit.edu/theses/11990
Campus
RIT Dubai