Detect Frauds in Credit Card using Data Mining Techniques

  • Mahajan* M
  • et al.
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Abstract

In today era credit card are extensively used for day to day business as well as other transactions. Ascent within the variety of transactions through master card has junction rectifier to rise in the dishonest activities. In trendy day's fraud is one in every of the most important concern within the monetary loses not solely to the merchants however additionally to the individual purchasers. Data processing had competed a commanding role within the detection of credit card in on-line group action. Our aim is to first of all establish the categories of the fraud secondly, the techniques like K-nearest neighbor, Hidden Markov model, SVM, logistic regression, decision tree and neural network. So fraud detection systems became essential for the banks to attenuate their loses. In this paper we have research about the various detecting techniques to identify and detect the fraud through varied techniques of data mining.

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Mahajan*, M., & Sharma, Dr. S. (2019). Detect Frauds in Credit Card using Data Mining Techniques. International Journal of Innovative Technology and Exploring Engineering, 9(2), 4891–4895. https://doi.org/10.35940/ijitee.a5041.129219

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