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A multi-algorithm data mining classification approach for bank fraudulent transactions
Author(s) -
Ayano Oluwafolake,
O. Akinola Solomon
Publication year - 2017
Publication title -
african journal of mathematics and computer science research
Language(s) - English
Resource type - Journals
ISSN - 2006-9731
DOI - 10.5897/ajmcsr2017.0686
Subject(s) - dbscan , computer science , data mining , cluster analysis , credit card fraud , false positive paradox , noise (video) , key (lock) , credit card , base (topology) , algorithm , artificial intelligence , image (mathematics) , computer security , cure data clustering algorithm , fuzzy clustering , payment , mathematics , mathematical analysis , world wide web
This paper proposes a multi-algorithm strategy for card fraud detection. Various techniques in data mining have been used to develop fraud detection models; it was however observed that existing works produced outputs with false positives that wrongly classified legitimate transactions as fraudulent in some instances; thereby raising false alarms, mismanaged resources and forfeit customers’ trust. This work was therefore designed to develop a hybridized model using an existing technique Density-Based Spatial Clustering of Applications with Noise (DBSCAN) combined with a rule base algorithm to reinforce the accuracy of the existing technique. The DBSCAN algorithm combined with Rule base algorithm gave a better card fraud prediction accuracy over the existing DBSCAN algorithm when used alone. Key words: Card fraud detection, density-based spatial clustering of applications with noise (DBSCAN), rule base algorithm, data mining.

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