Survey on counter Web Terrorism

Authors

  • Jeberson W Department of CSE & IT SSET, SHIATS, Allahabad UP, India
  • Sharma L Department of CSE and IT SSET, SHIATS, Allahabad UP, India

Keywords:

Terrorist activities, social network

Abstract

Terrorist activities is a big issue for the whole humanity, and as the whole world is moving rapidly by utilizing IT innovations, similarly terrorist groups are also using IT technologies as powerful tool for destructive activities. Today every terrorist group has strong presence over the web. In this paper we have surveyed various techniques and methods to analysis and prevent terrorist related activities. We found that that a timely identification of terrorist activities could help to prevent a large-scale public spread of communication exchange pertaining to the suspects/criminals’ ideas, messages, and connections. Paper also consists of an idea for identification & destabilization of terror groups in social network.

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Published

2024-02-26

How to Cite

Jeberson, W., & Sharma, L. (2024). Survey on counter Web Terrorism. COMPUSOFT: An International Journal of Advanced Computer Technology, 4(05), 1744–1747. Retrieved from https://ijact.in/index.php/j/article/view/306

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Section

Review Article

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