Fraud Detection using Data-Driven approach
Arianit Mehana, Krenare Pireva Nuci

TL;DR
This paper presents a real-time, adaptive fraud detection model for online banking that uses an incremental classifier to identify fraudulent transactions with up to 97% accuracy, addressing data complexity and evolving behaviors.
Contribution
The study introduces a novel real-time fraud detection approach utilizing an incremental classifier, capable of adapting to changing customer behaviors and detecting complex frauds effectively.
Findings
Detects fraud with up to 97% accuracy
Effectively handles complex, real-world fraud scenarios
Operates in real-time with low cost
Abstract
The extensive use of the internet is continuously drifting businesses to incorporate their services in the online environment. One of the first spectrums to embrace this evolution was the banking sector. In fact, the first known online banking service came in 1980. It was deployed from a community bank located in Knoxville, called the United American Bank. Since then, internet banking has been offering ease and efficiency to costumers in completing their daily banking tasks. The ever increasing use of internet banking and a large number of online transactions increased fraudulent behavior also. As if fraud increase was not enough, the massive number of online transactions further increased the data complexity. Modern data sources are not only complex but generated at high speed and in real-time as well. This presents a serious problem and a definite reason why more advanced solutions…
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Taxonomy
TopicsImbalanced Data Classification Techniques
Methods7 Fastest Ways to Call American Airlines Reservations Number (USA Guide)
