Ensemble Techniques for Credit Card Fraud Detection

AUTHORS

Satya Dileep Penmetsa,Computer Science Department, Lakehead University, Canada
Sabah Mohammed,Computer Science Department, Lakehead University, Canada

ABSTRACT

Credit card fraud is a problem that has grown by great danger and has a huge impact on the financial sector. The challenges of credit card fraud are the availability of public data, high imbalance in data, and volatility of the fraud nature. Over the years ensemble learning has gained more importance and proved to give better performance. Here we try to do a comparative study of various ensemble approaches using various learning algorithms on the credit card fraud data and to understand multiple models based on various evaluation and performance metrics using the SMOTE balancing technique.

 

KEYWORDS

Credit card fraud, Machine learning, Ensemble learning, Oversampling, SMOTE

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CITATION

  • APA:
    Penmetsa,S.D.& Mohammed,S.(2021). Ensemble Techniques for Credit Card Fraud Detection. International Journal of Smart Business and Technology, 9(2), 33-48. 10.21742/IJSBT.2021.9.2.03
  • Harvard:
    Penmetsa,S.D., Mohammed,S.(2021). "Ensemble Techniques for Credit Card Fraud Detection". International Journal of Smart Business and Technology, 9(2), pp.33-48. doi:10.21742/IJSBT.2021.9.2.03
  • IEEE:
    [1] S.D.Penmetsa, S.Mohammed, "Ensemble Techniques for Credit Card Fraud Detection". International Journal of Smart Business and Technology, vol.9, no.2, pp.33-48, Sep. 2021
  • MLA:
    Penmetsa Satya Dileep and Mohammed Sabah. "Ensemble Techniques for Credit Card Fraud Detection". International Journal of Smart Business and Technology, vol.9, no.2, Sep. 2021, pp.33-48, doi:10.21742/IJSBT.2021.9.2.03

ISSUE INFO

  • Volume 9, No. 2, 2021
  • ISSN(p):2288-8969
  • ISSN(e):2207-516X
  • Published:Sep. 2021

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