CREATION OF MACHINE LEARNING-BASED FINANCIAL FRAUD DETECTION SYSTEMS TO ENHANCE THE SECURITY AND RELIABILITY OF DIGITAL FINANCIAL TRANSACTIONS
- Authors
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S. Bala
Department of Mathematics, S.I.V.E.T. College, Gowrivakkam, Chennai-73 -
T. Vijay
Department of Mathematics, S.I.V.E.T. College, Gowrivakkam, Chennai-73 -
K. Thirusangu
Department of Mathematics, S.I.V.E.T. College, Gowrivakkam, Chennai-73
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- Keywords:
- Financial Fraud Detection, Machine Learning, Ensemble Learning, Digital Transactions, Cybersecurity
- Abstract
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Objective: This research proposes a novel machine learning-based framework for financial fraud detection that combines ensemble learning techniques with real-time transaction monitoring. Method: Our hybrid approach integrates Random Forest, Gradient Boosting, and Neural Network classifiers to achieve superior detection accuracy while minimizing false positives. Results: Experimental evaluation on real-world datasets demonstrates a fraud detection rate of 97.8% with a false positive rate of only 0.3%, significantly outperforming existing methods. The proposed system offers a scalable solution for enhancing the security and reliability of digital financial transactions. Novelty: The rapid digitization of financial services has created unprecedented opportunities for fraudulent activities, necessitating advanced detection mechanisms.
- References
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- 2025-12-12
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