This paper is published in Volume-3, Issue-6, 2017
Area
Computer Science
Author
Ghule Kiran Bharat, R. L Paikrao
Org/Univ
Amrutvahini College of Engineering, Sangamner, Maharashtra, India
Pub. Date
30 November, 2017
Paper ID
V3I6-1320
Publisher
Keywords
Security Bioinformatics, Extremist Group, Radical User Identification, Users Collocation Analysis, Social Media Analysis

Citationsacebook

IEEE
Ghule Kiran Bharat, R. L Paikrao. Ranking Radically Association Among Users On Web Forum, International Journal of Advance Research, Ideas and Innovations in Technology, www.IJARIIT.com.

APA
Ghule Kiran Bharat, R. L Paikrao (2017). Ranking Radically Association Among Users On Web Forum. International Journal of Advance Research, Ideas and Innovations in Technology, 3(6) www.IJARIIT.com.

MLA
Ghule Kiran Bharat, R. L Paikrao. "Ranking Radically Association Among Users On Web Forum." International Journal of Advance Research, Ideas and Innovations in Technology 3.6 (2017). www.IJARIIT.com.

Abstract

In the recent past, it has been found that the web is used as a tool by radical or extremist groups and users to perform several kinds of mischievous acts with concealed agendas and promote their ideologies in a sophisticated manner. Some of the web forums are especially being used for open discussions on critical issues influenced by radical thoughts. We propose an application of collocation theory to identify radically influential users in web forums. The radicalness of a user is captured by a measure based on the degree of match of the commented posts with a threat list. The experiments are conducted on a standard data set to find radical and infectious threads, members, postings, ideas, and ideologies. Proposed system to rank the user on text and image-based similarity measures. We make the following key contributions in the proposed system: An application for analyzing the data it may be text data or image data. If it is text data it will go through preprocessing stages like stop word removal, suffix removal, then by cosine similarity function, it checks the similarity with threat list then decide whether that user is radical or not. If its image data, if it contains text data then it separates text from the image by OCR technique. Send that text to text analysis and image goes through image preprocessing like image filtering, EHD to take aggregate features, using similarity measures it checks similarity with training data set. Finally, after measures of radicalness of user, it ranks the users by PageRank algorithm.