Intelligent Agents and Fraud Detection
نویسندگان
چکیده
Frauds have plagued telecommunication industries, financial institutions and other organizations for a long time. The types of frauds addressed in this paper include cellular communication frauds, credit card transaction frauds, and computer intrusions. These frauds cost the businesses millions of dollars per year. As a result, fraud detection has become an important and urgent task for these businesses. At present a number of methods have been implemented to detect frauds, from both statistical approaches (e.g. data mining) and hardware approaches (e.g. firewalls, smart cards).
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