Bipartite network model for inferring hidden ties in crime data
Title | Bipartite network model for inferring hidden ties in crime data |
Publication Type | Conference Paper |
Year of Publication | 2015 |
Authors | Isah, H., Neagu, D., Trundle, P. |
Conference Name | 2015 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM) |
Keywords | Algorithm design and analysis, Analytical models, artificial intelligence, bipartite network, bipartite network model, community analysis, community structure, crime data, criminal datasets, criminal group structural organisation, criminal networks, cyber criminals, data mining, disruption strategies, group identification, hidden ties inference, law enforcement, Measurement, network analysis, organised criminal network, pharmaceutical crime, pubcrawl170109, relationship mapping, security of data, Social network services, standard network algorithm, structural analysis, underground forum, underground forum data, vertex level metrics |
Abstract | Certain crimes are difficult to be committed by individuals but carefully organised by group of associates and affiliates loosely connected to each other with a single or small group of individuals coordinating the overall actions. A common starting point in understanding the structural organisation of criminal groups is to identify the criminals and their associates. Situations arise in many criminal datasets where there is no direct connection among the criminals. In this paper, we investigate ties and community structure in crime data in order to understand the operations of both traditional and cyber criminals, as well as to predict the existence of organised criminal networks. Our contributions are twofold: we propose a bipartite network model for inferring hidden ties between actors who initiated an illegal interaction and objects affected by the interaction, we then validate the method in two case studies on pharmaceutical crime and underground forum data using standard network algorithms for structural and community analysis. The vertex level metrics and community analysis results obtained indicate the significance of our work in understanding the operations and structure of organised criminal networks which were not immediately obvious in the data. Identifying these groups and mapping their relationship to one another is essential in making more effective disruption strategies in the future. |
DOI | 10.1145/2808797.2808842 |
Citation Key | isah_bipartite_2015 |
- hidden ties inference
- vertex level metrics
- underground forum data
- underground forum
- structural analysis
- standard network algorithm
- Social network services
- security of data
- relationship mapping
- pubcrawl170109
- pharmaceutical crime
- organised criminal network
- network analysis
- Measurement
- law enforcement
- Algorithm design and analysis
- group identification
- disruption strategies
- Data mining
- cyber criminals
- criminal networks
- criminal group structural organisation
- criminal datasets
- crime data
- community structure
- community analysis
- bipartite network model
- bipartite network
- Artificial Intelligence
- Analytical models