Title
Corporate residence fraud detection
Abstract
With the globalisation of the world's economies and ever-evolving financial structures, fraud has become one of the main dissipaters of government wealth and perhaps even a major contributor in the slowing down of economies in general. Although corporate residence fraud is known to be a major factor, data availability and high sensitivity have caused this domain to be largely untouched by academia. The current Belgian government has pledged to tackle this issue at large by using a variety of in-house approaches and cooperations with institutions such as academia, the ultimate goal being a fair and efficient taxation system. This is the first data mining application specifically aimed at finding corporate residence fraud, where we show the predictive value of using both structured and fine-grained invoicing data. We further describe the problems involved in building such a fraud detection system, which are mainly data-related (e.g. data asymmetry, quality, volume, variety and velocity) and deployment-related (e.g. the need for explanations of the predictions made).
Year
DOI
Venue
2014
10.1145/2623330.2623333
KDD
Keywords
Field
DocType
corporate residence fraud,fraud detection,transactional data,miscellaneous,structured data
Data mining,Data availability,Computer science,Globalization,Data model,Transaction data,Residence,Government
Conference
Citations 
PageRank 
References 
11
0.64
21
Authors
6
Name
Order
Citations
PageRank
Enric Junqué de Fortuny1110.64
Marija Stankova2141.70
Julie Moeyersoms3232.61
Bart Minnaert4181.49
Foster J. Provost55427740.79
David Martens6669.52