Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication

Recently, there has been a surge of interest in social networks ever since the tragic event of September 11, 2001 attacks on The World Trade Center in the United States. E-mail traffic, disease transmission, criminal activity and communication network can all be modeled as social networks. Ego-ce...

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Main Author: Ab Raub, Rosmawati
Format: Thesis
Language:English
English
Published: 2010
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/11933/1/FSKTM_2010_1.pdf
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spelling my-upm-ir.119332024-06-27T06:41:59Z Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication 2010-01 Ab Raub, Rosmawati Recently, there has been a surge of interest in social networks ever since the tragic event of September 11, 2001 attacks on The World Trade Center in the United States. E-mail traffic, disease transmission, criminal activity and communication network can all be modeled as social networks. Ego-centric is an approach used in social network analysis. In the social network parlance, the focused person is referred to as “ego” and his or her affiliate, friend or relative is known as “alters”. An egocentered network positions an individual at the center of a social network team for the person to traverse his or her relationships with other team members. Through social network analysis, enforcement officers can recognize how information flows through social ties, how people acquire information and resources and how cleavages and coalitions operate. In this thesis, based on social network theories and link analysis; a data mining technology, a social network analysis model is developed to facilitate in detecting fraudulent collaboration, after which an evaluation is then made on the performance of the developed model. This study aims to explore the usage of embedding social network analysis functions into fraudulent collaboration investigation in call details records. Two types of social network data collection approaches are discussed; (i) social network with centrality measures values and (ii) social network without centrality measures values, where the first approach is based on the previous research while the second is based on the current research experimented. Performance of the models produced by both approaches are measured based on a standard measurement. Performance is tested using statistical models which include Bayesian Network, Naïve Bayesian and Binary Logistic Regression Model is performed. These statistical models are used in order to prove and determine which model is the ‘best’ that can produce a better prediction of fraudulent collaboration. The outcome of this research is thought to be of help to any enforcement agency or relevant authority in its future operations or measures to detect fraudulent activity in social networks. Fraud investigation Telecommunication - Corrupt practices Social networks - Mathematical models 2010-01 Thesis http://psasir.upm.edu.my/id/eprint/11933/ http://psasir.upm.edu.my/id/eprint/11933/1/FSKTM_2010_1.pdf text en public masters Universiti Putra Malaysia Fraud investigation Telecommunication - Corrupt practices Social networks - Mathematical models Faculty of Computer Science And Infomation Technologi Mahmod, Ramlan English
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
English
advisor Mahmod, Ramlan
topic Fraud investigation
Telecommunication - Corrupt practices
Social networks - Mathematical models
spellingShingle Fraud investigation
Telecommunication - Corrupt practices
Social networks - Mathematical models
Ab Raub, Rosmawati
Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
description Recently, there has been a surge of interest in social networks ever since the tragic event of September 11, 2001 attacks on The World Trade Center in the United States. E-mail traffic, disease transmission, criminal activity and communication network can all be modeled as social networks. Ego-centric is an approach used in social network analysis. In the social network parlance, the focused person is referred to as “ego” and his or her affiliate, friend or relative is known as “alters”. An egocentered network positions an individual at the center of a social network team for the person to traverse his or her relationships with other team members. Through social network analysis, enforcement officers can recognize how information flows through social ties, how people acquire information and resources and how cleavages and coalitions operate. In this thesis, based on social network theories and link analysis; a data mining technology, a social network analysis model is developed to facilitate in detecting fraudulent collaboration, after which an evaluation is then made on the performance of the developed model. This study aims to explore the usage of embedding social network analysis functions into fraudulent collaboration investigation in call details records. Two types of social network data collection approaches are discussed; (i) social network with centrality measures values and (ii) social network without centrality measures values, where the first approach is based on the previous research while the second is based on the current research experimented. Performance of the models produced by both approaches are measured based on a standard measurement. Performance is tested using statistical models which include Bayesian Network, Naïve Bayesian and Binary Logistic Regression Model is performed. These statistical models are used in order to prove and determine which model is the ‘best’ that can produce a better prediction of fraudulent collaboration. The outcome of this research is thought to be of help to any enforcement agency or relevant authority in its future operations or measures to detect fraudulent activity in social networks.
format Thesis
qualification_level Master's degree
author Ab Raub, Rosmawati
author_facet Ab Raub, Rosmawati
author_sort Ab Raub, Rosmawati
title Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
title_short Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
title_full Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
title_fullStr Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
title_full_unstemmed Ego-Centric Approach For Predicting Fraudulent Collaboration In Telecommunication
title_sort ego-centric approach for predicting fraudulent collaboration in telecommunication
granting_institution Universiti Putra Malaysia
granting_department Faculty of Computer Science And Infomation Technologi
publishDate 2010
url http://psasir.upm.edu.my/id/eprint/11933/1/FSKTM_2010_1.pdf
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