CRIME RATE ANALYSIS AND PREDICTION USIN1G K MEANS CLUSTERING APPROACH
DOI:
https://doi.org/10.64751/Keywords:
Crime Analysis, Crime Prediction, K-Means Clustering, Data Mining, Machine Learning, Pattern Recognition, Predictive Policing, Smart City AnalyticsAbstract
Crime rate analysis and prediction have become essential for improving public safety and supporting law enforcement agencies in strategic decision-making. With the rapid growth of urban populations and increasing criminal activities, traditional crime monitoring methods are no longer sufficient to handle large volumes of crime data efficiently. This project proposes a crime rate analysis and prediction system using the K-Means clustering approach to identify crime patterns and forecast future crime trends based on historical datasets. The system applies data mining and machine learning techniques to analyze crime records collected from different regions and time periods.Initially, crime datasets are preprocessed to remove inconsistencies and missing values. Important attributes such as crime type, location, time, and frequency are selected for clustering analysis. The K-Means clustering algorithm groups similar crime patterns into clusters, helping identify high-risk areas and crime-prone zones. These clusters enable authorities to allocate resources effectively and implement preventive measures in vulnerable regions. Visualization techniques are also used to represent crime distribution and trend variations for better understanding and interpretation.The proposed system provides valuable insights into crime behavior and supports predictive policing strategies by assisting decisionmakers in planning security measures proactively. Compared to traditional statistical approaches, the K-Means clustering method improves pattern recognition and enhances analytical efficiency. Thus, the implementation of crime rate analysis and prediction using clustering techniques contributes significantly to crime prevention, public safety improvement, and smart city development through data-driven decision-making processes
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