Title :
Guilt-by-Constellation: Fraud Detection by Suspicious Clique Memberships
Author :
Van Vlasselaer, Veronique ; Akoglu, Leman ; Eliassi-Rad, Tina ; Snoeck, Monique ; Baesens, Bart
Author_Institution :
KU Leuven, Leuven, Belgium
Abstract :
Given a labeled graph containing fraudulent and legitimate nodes, which nodes group together? How can we use the riskiness of node groups to infer a future label for new members of a group? This paper focuses on social security fraud where companies are linked to the resources they use and share. The primary goal in social security fraud is to detect companies that intentionally fail to pay their contributions to the government. We aim to detect fraudulent companies by (1) propagating a time-dependent exposure score for each node based on its relationships to known fraud in the network, (2) deriving cliques of companies and resources, and labeling these cliques in terms of their fraud and bankruptcy involvement, and (3) characterizing each company using a combination of intrinsic and relational features and its membership in suspicious cliques. We show that clique-based features boost the performance of traditional relational models.
Keywords :
bankruptcy; fraud; graph theory; organisational aspects; public finance; bankruptcy involvement; fraud detection; fraudulent company; fraudulent node; government contribution; guilt-by-constellation; labeled graph; legitimate node; social security fraud; suspicious clique membership; Bipartite graph; Companies; Feature extraction; Government; Security; Symmetric matrices; Vectors; bipartite graphs; cliques; clustering; fraud detection; network analysis;
Conference_Titel :
System Sciences (HICSS), 2015 48th Hawaii International Conference on
Conference_Location :
Kauai, HI
DOI :
10.1109/HICSS.2015.114