GitHub / AnchaNarasimha / Forecasting-and-Analysis-of-Cyber-Crimes
This project employs ensemble learning methods to forecast cybercrime rates, utilizing datasets with population, internet subscriptions, and crime incidents. By analyzing trends and employing metrics like R2 Score and Mean Squared Error, it aims to enhance prediction accuracy and provide insights for effective prevention strategies.
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PURL: pkg:github/AnchaNarasimha/Forecasting-and-Analysis-of-Cyber-Crimes
Stars: 0
Forks: 0
Open issues: 0
License: None
Language: Python
Size: 3.83 MB
Dependencies parsed at: Pending
Created at: about 1 year ago
Updated at: about 1 year ago
Pushed at: about 1 year ago
Last synced at: about 1 year ago
Topics: bagging, boosting-algorithms, comparative-analysis, data-collection, data-preprocessing, ensemble-learning, feature-engineering, machine-learning-algorithms, random-forest, xgboost