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Adaptive Anomaly Detection in Database Transactions: Bridging Security Gaps with Reinforcement Learning

Author

Listed:
  • Clifton Reddy

    (American National Insurance Company, USA)

  • Saravanan Prabhagaran

    (Chantily, USA)

  • Adarsh Vaid

    (American National Insurance Company, USA)

Abstract

Anomaly detection in database transactions is critical for safeguarding sensitive information and ensuring the integrity of operations in industries like finance, healthcare, and e-commerce. Existing techniques, including rule-based, machine learning, and deep learning methods, face challenges such as high false positive rates, poor adaptability to evolving patterns, and limited scalability in imbalanced datasets. This research proposes a novel Reinforcement Learning (RL)-based anomaly detection system to address these limitations. The model employs a dynamic reward mechanism and anomaly scoring system to classify transactions accurately while reducing false positives. It leverages the Kaggle Anomaly Detection in Transactions Dataset and a synthetically generated dataset for training and evaluation. Experimental results show that the RL-based model outperforms traditional methods, achieving a precision of 95.2%, recall of 92.4%, and an AUC-ROC score of 97.2%, significantly higher than Autoencoders, Isolation Forest, and Support Vector Machines. The proposed model’s adaptability and robustness make it a scalable solution for real-time anomaly detection, addressing critical gaps in existing techniques. This study advances database security by offering a highly accurate, adaptive, and efficient system for detecting anomalies in complex transactional environments.

Suggested Citation

Handle: RePEc:epw:ejai00:v:4:y:2025:i:2:id:1053
DOI: 10.24018/ejai.2025.4.2.53
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