AI-Driven Fraud Detection in Digital Banking: A Hybrid Approach using Deep Learning and Anomaly Detection

Harman Salih Mohammed, Zina Bibo Sallow, Hewa Majeed Zangana

Abstract


The rapid digital transformation in the banking sector has introduced new opportunities for efficiency and customer convenience but has also amplified the risks of financial fraud. Traditional fraud detection mechanisms, often reliant on static rule-based systems, struggle to keep pace with the dynamic, evolving nature of fraudulent activities. This paper proposes a novel hybrid framework that integrates deep learning models with anomaly detection techniques to enhance the accuracy, robustness, and adaptability of fraud detection in digital banking. The proposed approach leverages a deep neural network (DNN) architecture trained under supervised learning to capture complex transactional patterns and combines it with autoencoder-based unsupervised anomaly detection to uncover previously unseen fraud strategies. Extensive experiments on benchmark financial datasets demonstrate that the hybrid system significantly outperforms state-of-the-art methods in terms of precision, recall, and false-positive reduction. Furthermore, the study highlights the scalability of the approach for real-time banking applications and its potential for multi-institutional deployment, enabling secure inter-bank fraud intelligence sharing without compromising data privacy. Extensive experiments on benchmark financial datasets demonstrate that the hybrid system significantly outperforms state-of-the-art methods in terms of precision, recall, and false-positive reduction. Furthermore, the study highlights the scalability of the approach for real-time banking applications. This work contributes to the growing field of AI-driven financial security by addressing both detection performance and adaptability to emerging fraud behaviors.

Keywords


Artificial Intelligence; Banking Cybersecurity; Fraud Detection; Large Language Models; Threat Intelligence

Full Text:

PDF

References


M. S. K. Munira, “Assessing the Influence of Cybersecurity Threats and Risks on the Adoption and Growth of Digital Banking: A Systematic Literature Review,” Available at SSRN 5229868, 2025.

A. Adejumo and C. Ogburie, “Strengthening Finance with Cybersecurity: ENSURING Safer Digital Transactions,” World Journal of Advanced Research and Reviews, Vol. 25, No. 3, pp. 1527–1541, 2025.

K. K. Boorugupalli, A. K. Kulkarni, A. Suzana, and S. Ponnusamy, “Cybersecurity Measures in Financial Institutions Protecting Sensitive Data from Emerging Threats and Vulnerabilities,” in ITM Web of Conferences, EDP Sciences, 2025, p. 02002.

O. E. Ejiofor, “A Comprehensive Framework for Strengthening USA Financial Cybersecurity: Integrating Machine Learning and AI in Fraud Detection Systems,” European Journal of Computer Science and Information Technology, Vol. 11, No. 6, pp. 62–83, 2023.

S. Paleti, V. Pamisetty, K. Challa, J. K. R. Burugulla, and A. Dodda, “Innovative Intelligence Solutions for Secure Financial Management: Optimizing Regulatory Compliance, Transaction Security, and Digital Payment Frameworks Through Advanced Computational Models,” Transaction Security, and Digital Payment Frameworks Through Advanced Computational Models (December 10, 2024), 2024.

N. Mirza, M. Elhoseny, M. Umar, and N. Metawa, “Safeguarding FinTech Innovations with Machine Learning: Comparative Assessment of Various Approaches,” Res Int Bus Finance, vol. 66, p. 102009, 2023.

W. C. Aaron, O. Irekponor, N. T. Aleke, L. Yeboah, and J. E. Joseph, “Ma-chine Learning Techniques for Enhancing Security in Financial Technology Systems,” 2024.

B. Stojanović et al., “Follow the Trail: Machine Learning for Fraud Detection in Fintech Applications,” Sensors, Vol. 21, No. 5, p. 1594, 2021.

M. Asmar and A. Tuqan, “Integrating Machine Learning for Sustaining Cybersecurity in Digital Banks,” Heliyon, Vol. 10, No. 17, 2024.

S.-Y. Hwang, D.-J. Shin, and J.-J. Kim, “Systematic Review on Identification and Prediction of Deep Learning-based Cyber Security Technology and Convergence Fields,” Symmetry (Basel), Vol. 14, No. 4, p. 683, 2022.

U. Noor, Z. Anwar, T. Amjad, and K.-K. R. Choo, “A Machine Learning-based FinTech Cyber Threat Attribution Framework using High-Level Indicators of Compromise,” Future Generation Computer Systems, vol. 96, pp. 227–242, 2019.

I. O. Owolabi, C. K. Mbabie, and J. C. Obiri, “AI-Driven Cybersecurity in FinTech & Cloud: Combating Evolving Threats with Intelligent Defense Mechanisms,” International Journal of Multidisciplinary Research in Science, Engineering and Technology, Vol. 7, p. 12, 2024.

S. Ryu, J. Kim, and N. Park, “Study on Trends and Predictions of Convergence in Cybersecurity Technology using Machine Learning,” Journal of Internet Technology, Vol. 24, No. 3, pp. 709–725, 2023.

R. Karangara, “Adaptive Machine Learning Models for Securing Payment Gateways: A Resilient Approach to Mitigating Evolving Cyber Threats in Digital Transactions,” Artificial Intelligence Evolution, pp. 44–64, 2025.

M. Ononiwu, T. I. Azonuche, O. F. Okoh, and J. O. Enyejo, “Machine Learning Approaches for Fraud Detection and Risk Assessment in Mobile Banking Applications and Fintech Solutions,” 2023.

H. R. B. Seshakagari and D. HariramNathan, “AI-Augmented Fraud Detection and Cybersecurity Framework for Digital Payments and E-Commerce Platforms,” International Journal of Computational Learning & Intelligence, Vol. 4, No. 4, pp. 832–846, 2025.

M. Williams, M. F. Yussuf, and A. O. Olukoya, “Machine Learning for Proactive Cybersecurity Risk Analysis and Fraud Prevention in Digital Finance Ecosystems,” ecosystems, Vol. 20, p. 21, 2021.

R. Ramadugu, “Effectiveness of Natural Language Processing based Security Tools in Strengthening the Security Over Fin-Tech Platforms,” International Journal of Creative Research Thoughts, Vol. 11, No. 8, pp. 199–219, 2023.

V. N. Kollu, V. Janarthanan, M. Karupusamy, and M. Ramachandran, “Cloud-based Smart Contract Analysis in Fintech using IoT-Integrated Federated Learning in Intrusion Detection,” Data (Basel), Vol. 8, No. 5, p. 83, 2023.

A. T. Olutimehin, “The Synergistic Role of Machine Learning, Deep Learning, and Reinforcement Learning in Strengthening Cyber Security Measures for Crypto Currency Platforms,” Deep Learning, and Reinforcement Learning in Strengthening Cyber Security Measures for Crypto Currency Platforms (February 11, 2025), 2025.

H. Rabbani et al., “Enhancing Security in Financial Transactions: A Novel Blockchain-based Federated Learning Framework for Detecting Counterfeit Data in Fintech,” PeerJ Comput SCI, Vol. 10, p. e2280, 2024.

A. Faccia, “National Payment Switches and the Power of Cognitive Computing Against Fintech Fraud,” Big Data and Cognitive Computing, Vol. 7, No. 2, p. 76, 2023.

K. Upreti, M. H. Syed, M. A. Khan, H. Fatima, M. S. Alam, and A. K. Sharma, “Enhanced Algorithmic Modelling and Architecture in Deep Reinforcement Learning based on Wireless Communication Fintech Technology,” Optik (Stuttg), Vol. 272, p. 170309, 2023.

H. Xia, Y. Wang, J. Gauthier, and J. Z. Zhang, “Knowledge Graph of Mobile Payment Platforms based on Deep Learning: Risk Analysis and Policy Implications,” Expert Syst Appl, Vol. 208, p. 118143, 2022.

S. Dhaiya, B. K. Pandey, S. B. K. Adusumilli, and R. Avacharmal, “Optimizing API Security in FinTech Through Genetic Algorithm based Machine Learning Model,” International Journal of Computer Network and Information Security, Vol. 13, p. 24, 2021.




DOI: https://doi.org/10.32520/stmsi.v15i1.5757

Article Metrics

Abstract view : 8 times
PDF - 1 times

Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.