A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis

This paper analyses, the terror attacks in Mumbai on November 26, 2008, popularly known as 26/11 terror attacks, as per a mathematical technique known as Social Network Analysis (SNA). This analysis of the behaviour of the ten attackers and their telephonic communications with their handlers in Paki...

Full description

Bibliographic Details
Main Authors: Sarita Azad, Arvind Gupta
Format: Article
Language:English
Published: University of St Andrews 2011-10-01
Series:Journal of Terrorism Research
Subjects:
Online Access:http://jtr.st-andrews.ac.uk/articles/187
id doaj-8484a7065791486291e5a27e0290923d
record_format Article
spelling doaj-8484a7065791486291e5a27e0290923d2020-11-24T21:46:02ZengUniversity of St AndrewsJournal of Terrorism Research2049-70402011-10-012210.15664/jtr.187184A Quantitative Assessment on 26/11 Mumbai Attack using Social Network AnalysisSarita AzadArvind GuptaThis paper analyses, the terror attacks in Mumbai on November 26, 2008, popularly known as 26/11 terror attacks, as per a mathematical technique known as Social Network Analysis (SNA). This analysis of the behaviour of the ten attackers and their telephonic communications with their handlers in Pakistan even as the attacks were in progress is based on the open source information. Using the SNA technique, we identify the key members, sub-groups, and the interaction among the various members of the group. The analysis gives useful insights into the modus operandi of the terrorists.  We have found that a star-type structure of hierarchy prevailed during the attack which means terrorists were well connected through a central node.http://jtr.st-andrews.ac.uk/articles/187social network analysisterrorismmathematical models26/11 Mumbai attack
collection DOAJ
language English
format Article
sources DOAJ
author Sarita Azad
Arvind Gupta
spellingShingle Sarita Azad
Arvind Gupta
A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
Journal of Terrorism Research
social network analysis
terrorism
mathematical models
26/11 Mumbai attack
author_facet Sarita Azad
Arvind Gupta
author_sort Sarita Azad
title A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
title_short A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
title_full A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
title_fullStr A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
title_full_unstemmed A Quantitative Assessment on 26/11 Mumbai Attack using Social Network Analysis
title_sort quantitative assessment on 26/11 mumbai attack using social network analysis
publisher University of St Andrews
series Journal of Terrorism Research
issn 2049-7040
publishDate 2011-10-01
description This paper analyses, the terror attacks in Mumbai on November 26, 2008, popularly known as 26/11 terror attacks, as per a mathematical technique known as Social Network Analysis (SNA). This analysis of the behaviour of the ten attackers and their telephonic communications with their handlers in Pakistan even as the attacks were in progress is based on the open source information. Using the SNA technique, we identify the key members, sub-groups, and the interaction among the various members of the group. The analysis gives useful insights into the modus operandi of the terrorists.  We have found that a star-type structure of hierarchy prevailed during the attack which means terrorists were well connected through a central node.
topic social network analysis
terrorism
mathematical models
26/11 Mumbai attack
url http://jtr.st-andrews.ac.uk/articles/187
work_keys_str_mv AT saritaazad aquantitativeassessmenton2611mumbaiattackusingsocialnetworkanalysis
AT arvindgupta aquantitativeassessmenton2611mumbaiattackusingsocialnetworkanalysis
AT saritaazad quantitativeassessmenton2611mumbaiattackusingsocialnetworkanalysis
AT arvindgupta quantitativeassessmenton2611mumbaiattackusingsocialnetworkanalysis
_version_ 1725902356670840832