• Corpus ID: 15300459

A review of Fraud Detection Techniques: Credit Card

@article{Chaudhary2012ARO,
  title={A review of Fraud Detection Techniques: Credit Card},
  author={Khyati Chaudhary and Jyoti Yadav and Bhawna Mallick},
  journal={International Journal of Computer Applications},
  year={2012},
  volume={45},
  pages={39-44}
}
In present scenario when the term fraud comes into a discussion, credit card fraud clicks to mind so far. With the great increase in credit card transactions, credit card fraud has increasing excessively in recent years. Fraud detection includes monitoring of the spending behavior of users/ customers in order to determination, detection, or avoidance of undesirable behavior. As credit card becomes the most prevailing mode of payment for both online as well as regular purchase, fraud relate with… 

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