Authors
Clifton Phua, Kate Smith-Miles, Vincent Lee, Ross Gayler
Publication date
2010/12/30
Journal
IEEE transactions on knowledge and data engineering
Volume
24
Issue
3
Pages
533-546
Publisher
IEEE
Description
Identity crime is well known, prevalent, and costly; and credit application fraud is a specific case of identity crime. The existing nondata mining detection system of business rules and scorecards, and known fraud matching have limitations. To address these limitations and combat identity crime in real time, this paper proposes a new multilayered detection system complemented with two additional layers: communal detection (CD) and spike detection (SD). CD finds real social relationships to reduce the suspicion score, and is tamper resistant to synthetic social relationships. It is the whitelist-oriented approach on a fixed set of attributes. SD finds spikes in duplicates to increase the suspicion score, and is probe-resistant for attributes. It is the attribute-oriented approach on a variable-size set of attributes. Together, CD and SD can detect more types of attacks, better account for changing legal behavior, and remove the …
Total citations
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Scholar articles
C Phua, K Smith-Miles, V Lee, R Gayler - IEEE transactions on knowledge and data engineering, 2010