Title :
Prudent Fraud Detection in Internet Banking
Author :
Maruatona, O.O. ; Vamplew, P. ; Dazeley, R.
Author_Institution :
Internet Commerce Security Lab., Univ. of Ballarat, Ballarat, VIC, Australia
Abstract :
Most commercial Fraud Detection components of Internet banking systems use some kind of hybrid setup usually comprising a Rule-Base and an Artificial Neural Network. Such rule bases have been criticised for a lack of innovation in their approach to Knowledge Acquisition and maintenance. Furthermore, the systems are brittle; they have no way of knowing when a previously unseen set of fraud patterns is beyond their current knowledge. This limitation may have far reaching consequences in an online banking system. This paper presents a viable alternative to brittleness in Knowledge Based Systems; a potential milestone in the rapid detection of unique and novel fraud patterns in Internet banking. The experiments conducted with real online banking transaction log files suggest that Prudent based fraud detection may be a worthy alternative in online banking.
Keywords :
Internet; bank data processing; fraud; knowledge acquisition; knowledge based systems; neural nets; transaction processing; Internet banking systems; Prudent based fraud detection; artificial neural network; brittleness; commercial fraud detection components; fraud patterns; knowledge acquisition; knowledge based systems; online banking system; real online banking transaction log files; rule bases; Online banking; RDM; RDR; RM; fraud detection; prudence;
Conference_Titel :
Cybercrime and Trustworthy Computing Workshop (CTC), 2012 Third
Conference_Location :
Ballarat, VIC
Print_ISBN :
978-1-4673-6460-7
DOI :
10.1109/CTC.2012.13