The banking and financial services industry today relies heavily on the use of networked computerized data systems to manage financial accounts and information on a real-time basis for millions of customers. This underlying technology is a source of a large quantity of information that can be used in the identification and prevention of financial fraud involving the illegal/unauthorized transfer of funds by entities external and internal to the victim financial institution. This paper develops a concept involving the use of neural networks to correlate information from a variety of technological and database sources to identify suspicious account activity.
Citation:
Ashish Vikram, Sivakumar Chennuru, H. R. Rao, Shambhu Upadhyaya, "A Solution Architecture for Financial Institutions to Handle Illegal Activities: A Neural Networks Approach," hicss, vol. 7, pp.70181a, Proceedings of the 37th Annual Hawaii International Conference on System Sciences (HICSS'04) - Track 7, 2004