Analyzing Newspaper Articles for Text-Related Data for Finding Vulnerable Posts Over the Internet That Are Linked to Terrorist Activities

Author:

Rawat Romil1,Mahor Vinod2ORCID,Garg Bhagwati3,Telang Shrikant1ORCID,Pachlasiya Kiran4,Kumar Anil5ORCID,Shukla Surendra Kumar6,Kuliha Megha7

Affiliation:

1. Shri Vaishnav Vidyapeeth Vishwavidyalaya, India

2. IPS College of Technology and Management, India

3. Union Bank of India, India

4. NRI Institute of Science and Technology, India

5. Government Engineering College, Bharatpur, India

6. Graphic Era Deemed to be University, Deharadun, India

7. Shri G.S. Institute of Technology and Science, Indore, India

Abstract

One of the most critical activities of revealing terrorism-related information is classifying online documents.The internet provides consumers with a variety of useful knowledge, and the volume of web material is increasingly growing. This makes finding potentially hazardous records incredibly difficult. To define the contents, merely extracting keywords from records is inadequate. Many methods have been studied so far to develop automatic document classification systems, they are mainly computational and knowledge-based approaches. due to the complexities of natural languages, these approaches do not provide sufficient results. To fix this shortcoming, we given approach of structure dependent on the WordNet hierarchy and the frequency of n-gram data that employs word similarity. Using four different queries terms from four different regions, this approach was checked for the NY Times articles that were sampled. Our suggested approach successfully removes background words and phrases from the document recognizes connected to terrorism texts, according to experimental findings.

Publisher

IGI Global

Subject

Information Systems

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