Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis.
The problem of link prediction has recently received increasing attention from scholars in network science. In social network analysis, one of its aims is to recover missing links, namely connections among actors which are likely to exist but have not been reported because data are incomplete or sub...
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2016-01-01
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doaj-72b222b24aa44d018ff09b2fd17ab7ad2020-11-25T00:44:18ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01114e015424410.1371/journal.pone.0154244Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis.Giulia BerlusconiFrancesco CalderoniNicola ParoliniMarco VeraniCarlo PiccardiThe problem of link prediction has recently received increasing attention from scholars in network science. In social network analysis, one of its aims is to recover missing links, namely connections among actors which are likely to exist but have not been reported because data are incomplete or subject to various types of uncertainty. In the field of criminal investigations, problems of incomplete information are encountered almost by definition, given the obvious anti-detection strategies set up by criminals and the limited investigative resources. In this paper, we work on a specific dataset obtained from a real investigation, and we propose a strategy to identify missing links in a criminal network on the basis of the topological analysis of the links classified as marginal, i.e. removed during the investigation procedure. The main assumption is that missing links should have opposite features with respect to marginal ones. Measures of node similarity turn out to provide the best characterization in this sense. The inspection of the judicial source documents confirms that the predicted links, in most instances, do relate actors with large likelihood of co-participation in illicit activities.http://europepmc.org/articles/PMC4841537?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Giulia Berlusconi Francesco Calderoni Nicola Parolini Marco Verani Carlo Piccardi |
spellingShingle |
Giulia Berlusconi Francesco Calderoni Nicola Parolini Marco Verani Carlo Piccardi Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. PLoS ONE |
author_facet |
Giulia Berlusconi Francesco Calderoni Nicola Parolini Marco Verani Carlo Piccardi |
author_sort |
Giulia Berlusconi |
title |
Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. |
title_short |
Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. |
title_full |
Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. |
title_fullStr |
Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. |
title_full_unstemmed |
Link Prediction in Criminal Networks: A Tool for Criminal Intelligence Analysis. |
title_sort |
link prediction in criminal networks: a tool for criminal intelligence analysis. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2016-01-01 |
description |
The problem of link prediction has recently received increasing attention from scholars in network science. In social network analysis, one of its aims is to recover missing links, namely connections among actors which are likely to exist but have not been reported because data are incomplete or subject to various types of uncertainty. In the field of criminal investigations, problems of incomplete information are encountered almost by definition, given the obvious anti-detection strategies set up by criminals and the limited investigative resources. In this paper, we work on a specific dataset obtained from a real investigation, and we propose a strategy to identify missing links in a criminal network on the basis of the topological analysis of the links classified as marginal, i.e. removed during the investigation procedure. The main assumption is that missing links should have opposite features with respect to marginal ones. Measures of node similarity turn out to provide the best characterization in this sense. The inspection of the judicial source documents confirms that the predicted links, in most instances, do relate actors with large likelihood of co-participation in illicit activities. |
url |
http://europepmc.org/articles/PMC4841537?pdf=render |
work_keys_str_mv |
AT giuliaberlusconi linkpredictionincriminalnetworksatoolforcriminalintelligenceanalysis AT francescocalderoni linkpredictionincriminalnetworksatoolforcriminalintelligenceanalysis AT nicolaparolini linkpredictionincriminalnetworksatoolforcriminalintelligenceanalysis AT marcoverani linkpredictionincriminalnetworksatoolforcriminalintelligenceanalysis AT carlopiccardi linkpredictionincriminalnetworksatoolforcriminalintelligenceanalysis |
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