TY - JOUR
T1 - Disclosing false identity through hybrid link analysis
AU - Boongoen, Tossapon
AU - Shen, Qiang
AU - Price, Christopher John
N1 - Funding Information:
Acknowledgments This work is sponsored by UK EPSRC grant EP/D057086. The authors are grateful to the members of the project team for their contribution, whilst taking full responsibility for the views expressed in this paper. The authors would also like to thank the anonymous referees for their constructive comments which have helped considerably in revising this work.
PY - 2010/3/1
Y1 - 2010/3/1
N2 - Combating the identity problem is crucial and urgent as false identity
has become a common denominator of many serious crimes, including mafia trafficking
and terrorism. Without correct identification, it is very difficult for law
enforcement authority to intervene, or even trace terrorists’ activities. Amongst
several identity attributes, personal names are commonly, and effortlessly, falsified
or aliased by most criminals. Typical approaches to detecting the use of false
identity rely on the similarity measure of textual and other content-based characteristics,
which are usually not applicable in the case of highly deceptive, erroneous
and unknown descriptions. This barrier can be overcome through analysis of link
information displayed by the individual in communication behaviours, financial
interactions and social networks. In particular, this paper presents a novel link-based
approach that improves existing techniques by integrating multiple link properties in
the process of similarity evaluation. It is utilised in a hybrid model that proficiently
combines both text-based and link-based measures of examined names to refine the
justification of their similarity. This approach is experimentally evaluated against
other link-based and text-based techniques, over a terrorist-related dataset, with
further generalization to a similar problem occurring in publication databases. The
empirical study demonstrates the great potential of this work towards developing an
effective identity verification system.
AB - Combating the identity problem is crucial and urgent as false identity
has become a common denominator of many serious crimes, including mafia trafficking
and terrorism. Without correct identification, it is very difficult for law
enforcement authority to intervene, or even trace terrorists’ activities. Amongst
several identity attributes, personal names are commonly, and effortlessly, falsified
or aliased by most criminals. Typical approaches to detecting the use of false
identity rely on the similarity measure of textual and other content-based characteristics,
which are usually not applicable in the case of highly deceptive, erroneous
and unknown descriptions. This barrier can be overcome through analysis of link
information displayed by the individual in communication behaviours, financial
interactions and social networks. In particular, this paper presents a novel link-based
approach that improves existing techniques by integrating multiple link properties in
the process of similarity evaluation. It is utilised in a hybrid model that proficiently
combines both text-based and link-based measures of examined names to refine the
justification of their similarity. This approach is experimentally evaluated against
other link-based and text-based techniques, over a terrorist-related dataset, with
further generalization to a similar problem occurring in publication databases. The
empirical study demonstrates the great potential of this work towards developing an
effective identity verification system.
KW - False identity detection
KW - Hybrid algorithm
KW - Link analysis
KW - Terrorist data
UR - http://www.scopus.com/inward/record.url?scp=77953612662&partnerID=8YFLogxK
U2 - 10.1007/s10506-010-9085-9
DO - 10.1007/s10506-010-9085-9
M3 - Article
SN - 0924-8463
VL - 18
SP - 77
EP - 102
JO - Artificial Intelligence and Law
JF - Artificial Intelligence and Law
IS - 1
ER -