Detection of Credit Card Fraud with Optimized Deep Neural Network in Balanced Data Condition

Authors

  • Nirupam Shome Assam University Silchar
  • Devran Dey Sarkar
  • Richik Kashyap Assam University, Silchar, Assam, India
  • Rabul Hussain Lasker National Institute Technology, Silchar, Assam, India

DOI:

https://doi.org/10.7494/csci.2024.25.2.5967

Abstract

Due to the huge number of financial transactions, it is almost impossible for humans to manually detect fraudulent transactions. In previous work, the datasets are not balanced and the models suffer from overfitting problems. In this paper, we tried to overcome the problems by tuning hyperparameters and balancing the dataset by hybrid approach using under-sampling and over-sampling techniques. In this study, we have observed that these modifications are effective to get better performance in comparison to the existing models. The MCC score is considered an important parameter in binary classification since it ensures the correct prediction of the majority of positive data instances and negative data instances. So, we emphasize on MCC score and our method achieved MCC score of 97.09%, which is far more (16 % approx.) than other state of art methods. In terms of other performance metrics, the result of our proposed model is also improved significantly.

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Author Biographies

Richik Kashyap, Assam University, Silchar, Assam, India

Head of the Department of Electronics & Communication Engineering, Assam University, Silchar, Assam, India

Rabul Hussain Lasker, National Institute Technology, Silchar, Assam, India

Head of the Department of Electronics & Communication Engineering, National Institute Technology, Silchar, Assam, India

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Published

2024-06-24

How to Cite

Shome, N., Sarkar, D. D. ., Kashyap, R. ., & Lasker, R. H. . (2024). Detection of Credit Card Fraud with Optimized Deep Neural Network in Balanced Data Condition. Computer Science, 25(2). https://doi.org/10.7494/csci.2024.25.2.5967

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Articles