首页 | 本学科首页   官方微博 | 高级检索  
     


NEVA: Visual Analytics to Identify Fraudulent Networks
Authors:Roger A Leite  Theresia Gschwandtner  Silvia Miksch  Erich Gstrein  Johannes Kuntner
Affiliation:1. Faculty of Informatics, Vienna University of Technology (TU Wien), Vienna, Austria;2. s IT Solutions AT Spardat GmbH, Vienna, Austria;3. Erste Group IT International, Wien, Austria
Abstract:Trust-ability, reputation, security and quality are the main concerns for public and private financial institutions. To detect fraudulent behaviour, several techniques are applied pursuing different goals. For well-defined problems, analytical methods are applicable to examine the history of customer transactions. However, fraudulent behaviour is constantly changing, which results in ill-defined problems. Furthermore, analysing the behaviour of individual customers is not sufficient to detect more complex structures such as networks of fraudulent actors. We propose NEVA (Network dEtection with Visual Analytics), a Visual Analytics exploration environment to support the analysis of customer networks in order to reduce false-negative and false-positive alarms of frauds. Multiple coordinated views allow for exploring complex relations and dependencies of the data. A guidance-enriched component for network pattern generation, detection and filtering support exploring and analysing the relationships of nodes on different levels of complexity. In six expert interviews, we illustrate the applicability and usability of NEVA.
Keywords:visualization  visual analytics  financial fraud detection
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号