Research Journal of Engineering and Technology
  • Year: 2025
  • Volume: 16
  • Issue: 2

Enhancing social media Integrity a Machine learning based rumor identification system utilizing CNN for accurate real time tweet analysis

  • Author:
  • M. S. Maharajan1,*, Hariharan Akshay Dev1, S Jeffrey Steve Paul1, G Lakshmikanthan1, D Chandru1, R Dhanush Kodi1, M. Gopinathan1
  • Total Page Count: 11
  • Published Online: Apr 14, 2026
  • Page Number: 80 to 90

1Department of Artificial Intelligence & Data Science, Panimalar Engineering College, Chennai, 600123, India

*Corresponding Author E-mail: maha84rajan@gmail.com

Online Published on 14 April, 2026.

Abstract

Modern cyber-attacks grow tougher that motivates the need for advanced protection methods. A real-time attack detection system operates through analysis of SIP signals by implementing CNN-based approaches according to the concept. The automated traffic analysis of the system uses a detection mechanism which detects potential attacks with both precision and speed. The CNN model uses network analysis to generate threat-based protection better than traditional signature approaches that need manual rulemaking. A dynamic real-time streaming system operates within the system framework to process SIP signals in real-time. The proposed detection approach succeeds in security tests which establishes exceptional results while reducing false warning occurrences. The approach works through deep learning techniques that promote automatic real-time attack detection which functions with high efficiency.

Keywords

A combination of Network Security with SIP Signal, Convolutional Neural Networks (CNN), Attack Detection, Real-Time Analysis, Deep Learning systems forms the base of this research