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Detection of credit card frauds with machine learning solutions: an experimental approach

  • Courage Mabani
    ,
  • Nikolaos Christou
    ,
  • Sergey Katkov
Research Output: Chapter in Book/Report/Conference proceeding Conference contribution Peer-review

Abstract

In many cases frauds in payment transactions could be detected by analysing the customer’s behaviour. Only in the United States fraudulent transactions led to financial losses of 300 billion a year. Machine learning (ML) and Data Mining techniques were shown to be efficient for detection of fraudulent transactions. This paper proposes an experimental way for designing a ML solution to the problem, which allows practitioners to minimise financial losses by analysing the customer’s behaviour and common patterns of using credit cards. The solution designed within a Random Forest (RF) strategy is examined on a public data set available for the research community. The results obtained on the benchmark data show that the proposed approach provides a high accuracy of detecting fraudulent transaction based on the customer’s behaviour patterns that were learnt from data. This allow us to conclude that the use of the RF models for detecting credit card fraud transactions allows practitioners to design an efficient solution in terms of sensitivity and specificity. Our experimental results show that practitioners using the RF models can find new insights into the problem and minimise the losses.

Publication Information

Output type

Research Output: Chapter in Book/Report/Conference proceeding Conference contribution Peer-review

Original language

English

Pages from-to (Number of pages)

Pages 715-722 (8 pages)

Publication milestones

  • Published - 07/07/2022

Publication status

Published - 07/07/2022

Edition

506

Volume

506

Publisher

Springer, Japan, India, Australia, Germany, United States, United Arab Emirates, Austria, Switzerland, Italy, China, United Kingdom, Netherlands, Brazil, France, Singapore

Publication series

  • Publication series name: Lecture Notes in Networks and Systems
    ISSN (Print): 2367-3370
    ISSN (Electronic): 2367-3389
    Volume: 506 LNNS
9783031104602

External Publication IDs

  • handle.net: 10547/625605
  • Scopus: 85135013335

Host publication title

Intelligent Computing - Proceedings of the 2022 Computing Conference

Host publication editors

  • Kohei Arai