IEEE Access (Jan 2023)

Online Payment Fraud Detection Model Using Machine Learning Techniques

  • Abdulwahab Ali Almazroi,
  • Nasir Ayub

DOI
https://doi.org/10.1109/ACCESS.2023.3339226
Journal volume & issue
Vol. 11
pp. 137188 – 137203

Abstract

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In a world where wireless communications are critical for transferring massive quantities of data while protecting against interference, the growing possibility of financial fraud has become a significant concern. The ResNeXt-embedded Gated Recurrent Unit (GRU) model (RXT) is a unique artificial intelligence approach precisely created for real-time financial transaction data processing. Motivated by the need to address the rising threat of financial fraud, which poses major risks to financial institutions and customers, our artificial intelligence technique takes a systematic approach. We commence the process with artificial intelligence data input and preprocessing, mitigating data imbalance using the SMOTE. Feature extraction uses an artificial intelligence ensemble approach that combines autoencoders and ResNet (EARN) to reveal critical data patterns, while feature engineering further enhances the model’s discriminative capabilities. The core of our artificial intelligence classification task lies in the RXT model, fine-tuned with hyperparameters using the Jaya optimization algorithm (RXT-J). Our artificial intelligence model undergoes comprehensive evaluation on three authentic financial transaction datasets, consistently outperforming existing algorithms by a substantial margin of 10% to 18% across various evaluation metrics while maintaining impressive computational efficiency. This pioneering artificial intelligence research represents a significant advancement in the ongoing battle against financial fraud, promising heightened security and optimized efficiency in financial transactions. In defense against wireless communication interference, our artificial intelligence work aims to strengthen security, data availability, reliability, and stability against cyber warfare attacks within the financial industry.

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