Event Networks and the Identification of Crime Pattern Motifs.

In this paper we demonstrate the use of network analysis to characterise patterns of clustering in spatio-temporal events. Such clustering is of both theoretical and practical importance in the study of crime, and forms the basis for a number of preventative strategies. However, existing analytical...

Full description

Bibliographic Details
Main Authors: Toby Davies, Elio Marchione
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4659661?pdf=render
id doaj-0a56521e05764d94a6846d64efddad4f
record_format Article
spelling doaj-0a56521e05764d94a6846d64efddad4f2020-11-24T21:27:12ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-011011e014363810.1371/journal.pone.0143638Event Networks and the Identification of Crime Pattern Motifs.Toby DaviesElio MarchioneIn this paper we demonstrate the use of network analysis to characterise patterns of clustering in spatio-temporal events. Such clustering is of both theoretical and practical importance in the study of crime, and forms the basis for a number of preventative strategies. However, existing analytical methods show only that clustering is present in data, while offering little insight into the nature of the patterns present. Here, we show how the classification of pairs of events as close in space and time can be used to define a network, thereby generalising previous approaches. The application of graph-theoretic techniques to these networks can then offer significantly deeper insight into the structure of the data than previously possible. In particular, we focus on the identification of network motifs, which have clear interpretation in terms of spatio-temporal behaviour. Statistical analysis is complicated by the nature of the underlying data, and we provide a method by which appropriate randomised graphs can be generated. Two datasets are used as case studies: maritime piracy at the global scale, and residential burglary in an urban area. In both cases, the same significant 3-vertex motif is found; this result suggests that incidents tend to occur not just in pairs, but in fact in larger groups within a restricted spatio-temporal domain. In the 4-vertex case, different motifs are found to be significant in each case, suggesting that this technique is capable of discriminating between clustering patterns at a finer granularity than previously possible.http://europepmc.org/articles/PMC4659661?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Toby Davies
Elio Marchione
spellingShingle Toby Davies
Elio Marchione
Event Networks and the Identification of Crime Pattern Motifs.
PLoS ONE
author_facet Toby Davies
Elio Marchione
author_sort Toby Davies
title Event Networks and the Identification of Crime Pattern Motifs.
title_short Event Networks and the Identification of Crime Pattern Motifs.
title_full Event Networks and the Identification of Crime Pattern Motifs.
title_fullStr Event Networks and the Identification of Crime Pattern Motifs.
title_full_unstemmed Event Networks and the Identification of Crime Pattern Motifs.
title_sort event networks and the identification of crime pattern motifs.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description In this paper we demonstrate the use of network analysis to characterise patterns of clustering in spatio-temporal events. Such clustering is of both theoretical and practical importance in the study of crime, and forms the basis for a number of preventative strategies. However, existing analytical methods show only that clustering is present in data, while offering little insight into the nature of the patterns present. Here, we show how the classification of pairs of events as close in space and time can be used to define a network, thereby generalising previous approaches. The application of graph-theoretic techniques to these networks can then offer significantly deeper insight into the structure of the data than previously possible. In particular, we focus on the identification of network motifs, which have clear interpretation in terms of spatio-temporal behaviour. Statistical analysis is complicated by the nature of the underlying data, and we provide a method by which appropriate randomised graphs can be generated. Two datasets are used as case studies: maritime piracy at the global scale, and residential burglary in an urban area. In both cases, the same significant 3-vertex motif is found; this result suggests that incidents tend to occur not just in pairs, but in fact in larger groups within a restricted spatio-temporal domain. In the 4-vertex case, different motifs are found to be significant in each case, suggesting that this technique is capable of discriminating between clustering patterns at a finer granularity than previously possible.
url http://europepmc.org/articles/PMC4659661?pdf=render
work_keys_str_mv AT tobydavies eventnetworksandtheidentificationofcrimepatternmotifs
AT eliomarchione eventnetworksandtheidentificationofcrimepatternmotifs
_version_ 1725976016315219968