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Tuning Machine Learning Models Using a Group Search Firefly Algorithm for Credit Card Fraud Detection

Author

Listed:
  • Dijana Jovanovic

    (College of Academic Studies Dositej, 11000 Belgrade, Serbia)

  • Milos Antonijevic

    (Faculty of Informatics and Computing, Singidunum University, Danijelova 32, 11010 Belgrade, Serbia)

  • Milos Stankovic

    (Faculty of Informatics and Computing, Singidunum University, Danijelova 32, 11010 Belgrade, Serbia)

  • Miodrag Zivkovic

    (Faculty of Informatics and Computing, Singidunum University, Danijelova 32, 11010 Belgrade, Serbia)

  • Marko Tanaskovic

    (Faculty of Informatics and Computing, Singidunum University, Danijelova 32, 11010 Belgrade, Serbia)

  • Nebojsa Bacanin

    (Faculty of Informatics and Computing, Singidunum University, Danijelova 32, 11010 Belgrade, Serbia)

Abstract

Recent advances in online payment technologies combined with the impact of the COVID-19 global pandemic has led to a significant escalation in the number of online transactions and credit card payments being executed every day. Naturally, there has also been an escalation in credit card frauds, which is having a significant impact on the banking institutions, corporations that issue credit cards, and finally, the vendors and merchants. Consequently, there is an urgent need to implement and establish proper mechanisms that can secure the integrity of online card transactions. The research presented in this paper proposes a hybrid machine learning and swarm metaheuristic approach to address the challenge of credit card fraud detection. The novel, enhanced firefly algorithm, named group search firefly algorithm, was devised and then used to a tune support vector machine, an extreme learning machine, and extreme gradient-boosting machine learning models. Boosted models were tested on the real-world credit card fraud detection dataset, gathered from the transactions of the European credit card users. The original dataset is highly imbalanced; to further analyze the performance of tuned machine learning models, in the second experiment performed for the purpose of this research, the dataset has been expanded by utilizing the synthetic minority over-sampling approach. The performance of the proposed group search firefly metaheuristic was compared with other recent state-of-the-art approaches. Standard machine learning performance indicators have been used for the evaluation, such as the accuracy of the classifier, recall, precision, and area under the curve. The experimental findings clearly demonstrate that the models tuned by the proposed algorithm obtained superior results in comparison to other models hybridized with competitor metaheuristics.

Suggested Citation

  • Dijana Jovanovic & Milos Antonijevic & Milos Stankovic & Miodrag Zivkovic & Marko Tanaskovic & Nebojsa Bacanin, 2022. "Tuning Machine Learning Models Using a Group Search Firefly Algorithm for Credit Card Fraud Detection," Mathematics, MDPI, vol. 10(13), pages 1-30, June.
  • Handle: RePEc:gam:jmathe:v:10:y:2022:i:13:p:2272-:d:851225
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    Citations

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    Cited by:

    1. Yong-Hyuk Kim & Fabio Caraffini, 2023. "Preface to “Swarm and Evolutionary Computation—Bridging Theory and Practice”," Mathematics, MDPI, vol. 11(5), pages 1-3, March.
    2. Naveed Ahmed Malik & Naveed Ishtiaq Chaudhary & Muhammad Asif Zahoor Raja, 2023. "Firefly Optimization Heuristics for Sustainable Estimation in Power System Harmonics," Sustainability, MDPI, vol. 15(6), pages 1-20, March.
    3. Luka Jovanovic & Dejan Jovanovic & Nebojsa Bacanin & Ana Jovancai Stakic & Milos Antonijevic & Hesham Magd & Ravi Thirumalaisamy & Miodrag Zivkovic, 2022. "Multi-Step Crude Oil Price Prediction Based on LSTM Approach Tuned by Salp Swarm Algorithm with Disputation Operator," Sustainability, MDPI, vol. 14(21), pages 1-29, November.

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