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On the communal analysis suspicion scoring for identity crime in streaming credit applications

journal contribution
posted on 2009-06-01, 00:00 authored by C Phua, R Gayler, V Lee, K Smith-Miles
This paper describes a rapid technique: communal analysis suspicion scoring (CASS), for generating numeric suspicion scores on streaming credit applications based on implicit links to each other, over both time and space. CASS includes pair-wise communal scoring of identifier attributes for applications, definition of categories of suspiciousness for application-pairs, the incorporation of temporal and spatial weights, and smoothed k-wise scoring of multiple linked application-pairs. Results on mining several hundred thousand real credit applications demonstrate that CASS reduces false alarm rates while maintaining reasonable hit rates. CASS is scalable for this large data sample, and can rapidly detect early symptoms of identity crime. In addition, new insights have been observed from the relationships between applications.

History

Journal

European journal of operational research

Volume

195

Issue

2

Pagination

595 - 612

Publisher

Elsevier BV

Location

Amsterdam, Netherlands

ISSN

0377-2217

eISSN

1872-6860

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2008, Elsevier B.V.