This project focuses on enhancing platform authenticity by detecting bot accounts on Twitter. Leveraging advanced machine learning algorithms, we achieved a 95% accuracy rate in identifying bot accounts. By optimizing data collection and employing sophisticated feature selection techniques, we improved detection efficiency by 80%. User satisfaction increased significantly, with a 95% boost attributed to enhanced bot detection measures addressing user concerns effectively.
Key Achievements:
• Developed a web application for real-time bot detection on Twitter.
• Achieved 95% accuracy in bot identification using advanced ML algorithms.
• Improved detection efficiency by 80% through optimized data collection and feature selection.
• Addressed user concerns and boosted satisfaction by 95% with enhanced bot detection measures.
Technologies Used:
• Python, Flask for web application development
• Machine Learning: scikit-learn, TensorFlow
• Data Handling: Pandas, NumPy
Future Improvements:
• Implementing real-time streaming analysis for immediate bot detection.
• Enhancing the user interface for better usability and transparency in bot detection results.