Title :
Detecting Criminal Networks Using Social Similarity
Author :
Ozgul, Fatih ; Erdem, Z.
Author_Institution :
Turkish Nat. Police Counterterrorism HQ, Ankara, Turkey
Abstract :
Existing literature shows that social demographics features of criminal network members are important. Examples include similarity on kinship, coming from the same family, the same ethnic origin or hometown, and living in the same neighborhoods. This paper investigates whether these social similarity features can be used for detecting members of criminal networks. We developed XSDM (Extended Social Detection Model), which removes some of the weaknesses of its predecessor SODM (Social Detection Model) by adding the attribute of living in the same neighborhood in addition to having the same surname and coming from the same hometown. XSDM is tested on the Diyarbakir dataset, containing 221 drug dealing networks. XSDM detected 81 out of 221 drug dealing networks using social demographic features of individual criminals. XSDM is evaluated by recall and precision values which performed better its predecessor SODM.
Keywords :
criminal law; demography; ethical aspects; Diyarbakir dataset; SODM; XSDM; criminal network detection; criminal network member; drug dealing network; ethnic origin; extended social detection model; hometown; social demographics; social similarity; Data mining; Data models; Drugs; Educational institutions; Feature extraction; Presses; Social network services; criminal networks; feature selection; feature similarity; group detection; link analysis; social demographics;
Conference_Titel :
Advances in Social Networks Analysis and Mining (ASONAM), 2012 IEEE/ACM International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-1-4673-2497-7
DOI :
10.1109/ASONAM.2012.98