Real-Time Credit Card Fraud Detection With Streaming Analytics: A Convergent Framework Using Kafka, Deep Learning, And Hybrid Provenance
- Authors
-
-
Dr. Anika Moreau
Department of Computer Science, University of Melbourne, AustraliaAuthor
-
- Keywords:
- Real-time fraud detection, streaming analytics, deep learning
- Abstract
-
This article develops a comprehensive, publication-ready synthesis and original framework for near real-time credit card fraud detection grounded in streaming analytics, deep learning, and pragmatic system design. Drawing from empirical and methodological literature on real-time fraud detection, streaming platforms (Kafka, Spark, Flink), deep learning architectures, large-scale anomaly detection, and operational constraints in financial systems, the paper articulates a resilient architectural pattern that balances latency, detection accuracy, explainability, and data governance (Abakarim et al., 2018; Rajeshwari & Babu, 2016; Martín Hernández, 2015; Hebbar, 2025). The proposed Convergent Streaming Detection Framework emphasizes a tiered detection pipeline: ultrafast rule-based triage in the streaming path, lightweight explainable models for immediate scoring, and contextual deep models (including sequence and graph-based learners) operating on enriched windows for elevated scrutiny (Nicholls et al., 2021; Zhou et al., 2019). Practical considerations include feature engineering for streaming contexts, approaches to class imbalance and concept drift, strategies for low-latency model serving, and hybrid provenance and logging to preserve forensic trails without violating privacy or incurring prohibitive storage and throughput costs (Saxena & Gupta, 2017; Nguyen et al., 2020). The article also details rigorous evaluation metrics appropriate to streaming fraud contexts, an experimental design for realistic pilot deployments, adversarial threat modeling, and a multi-year research agenda emphasizing red-team testing and socio-technical evaluation. The synthesis stresses that engineering trade-offs—between latency and model complexity, explainability and predictive performance, and on-chain/off-chain evidence storage—must be made transparently and governed by regulatory and user-centric considerations (The Business Research Company, 2025; Udeh et al., 2024). The contribution is a practically actionable blueprint for researchers and practitioners seeking to deploy deep-learning-driven fraud detection in production-grade streaming environments.
- Downloads
-
Download data is not yet available.
- References
-
Rajeshwari, U., and B. Sathish Babu. Real-time credit card fraud detection using streaming analytics. 2016 2nd International Conference on Applied and Theoretical Computing and Communication Technology (iCATccT). IEEE, 2016.
Martín Hernández, Sergi. Near real time fraud detection with Apache Spark. 2015.
Jayanthi, D., G. Sumathi, and Sriperumbudur Sriperumbudur. A framework for real-time streaming analytics using a machine learning approach. Proceedings of national conference on communication and informatics. 2016.
Zhou, Hangjun, et al. A scalable approach for fraud detection in online e-commerce transactions with big data analytics. Computers, Materials & Continua 60.1 (2019): 179-192.
Saxena, Shilpi, and Saurabh Gupta. Practical real-time data processing and analytics: distributed computing and event processing using Apache Spark, Flink, Storm, and Kafka. Packt Publishing Ltd, 2017.
Nicholls, J., Kuppa, A., & Le-Khac, N.-A. Financial cybercrime: a comprehensive survey of deep learning approaches to tackle the evolving financial crime landscape. IEEE Access, 2021.
Chen, Z., Van Khoa, L. D., Teoh, E. N., Nazir, A., Karuppiah, E. K., & Lam, K. S. Machine learning techniques for anti-money laundering (AML) solutions in suspicious transaction detection: a review. Knowledge and Information Systems, 2018.
Jensen, R., & Iosifidis, A. Fighting money laundering with statistics and machine learning. IEEE Access, 2023.
Demetis, D. S. Fighting money laundering with technology: a case study of bank x in the UK. Decision Support Systems, 2018.
Chen, Z., Soliman, W. M., Nazir, A., & Shorfuzzaman, M. Variational autoencoders and Wasserstein generative adversarial networks for improving the anti-money laundering process. IEEE Access, 2021.
Abbassi, H., Abdellah, B., Mendili, S., & Youssef, G. End-to-end real-time architecture for fraud detection in online digital transactions. International Journal of Advanced Computer Science and Applications, 2023.
Alkhalili, M., Qutqut, M. H., & Almasalha, F. Investigation of applying machine learning for watch-list filtering in anti-money laundering. IEEE Access, 2021.
The Business Research Company. Financial Services Market Definition. The Business Research Company Insight. Jan. 2025.
Stéphane Derosiaux. The Rise of Data Streaming and the Evolution of Data at Rest: 2018-2024. Medium. 5 Feb. 2025.
Ezekiel Onyekachukwu Udeh et al. The role of big data in detecting and preventing financial fraud in digital transactions. World Journal of Advanced Research and Reviews. 24 May 2024.
Hivemind Technologies. Apache Kafka in the Financial Sector: Real-Time Data Processing for Banking Operations. LinkedIn Pulse. 29 Oct. 2024.
Jim Marous. Improving the Customer Experience in Banking. Digital Banking Report. Feb. 2017.
Seshika Fernando. Real-Time Analytics in Banking and Finance: Use Cases. WSO2 Whitepaper. April 2017.
Hebbar, K. S. AI-DRIVEN REAL-TIME FRAUD DETECTION USING KAFKA STREAMS IN FINTECH. International Journal of Applied Mathematics, 38(6s), 770-782. 2025.
Wang, J., & Liu, Q. Advancements in AI and Machine Learning for Financial Fraud Detection. International Journal of Data Science, 2023.
Baah, S. S., Adu-Twum, H. T., Adjei, S. O., Ampadu, G., Martins, A. O., & Fonkem, B. Leveraging big data analytics to combat emerging financial fraud schemes in the USA: A literature review and practical implications. World Journal of Advanced Research and Reviews, 2024.
Uddin, N. Significance of Live Streaming in Shaping Business: A Critical Review and Analytical Study. Social Networking, 2024.
Federal Trade Commission. Consumer Sentinel Network Data Book. 2024.
The Motley Fool. Report on Identity Theft. 2024.
The Motley Fool. Credit Card Fraud Statistics. 2024.
Wang and Liu. Advancements in AI and Machine Learning for Financial Fraud Detection. 2023.
Baah et al. Leveraging big data analytics to combat emerging financial fraud schemes. 2024.
Uddin, N. Significance of Live Streaming in Shaping Business. 2024.
- Downloads
- Published
- 2025-11-30
- Section
- Articles
- License
-
Copyright (c) 2025 Dr. Anika Moreau (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
Similar Articles
- Dr. Lukas Meyer, Integrating Hyperautomation, Generative Artificial Intelligence, and Intelligent Infrastructure for Smart Cities: A Unified Socio-Technical Framework , Emerging Indexing of Global Multidisciplinary Journal: Vol. 5 No. 1 (2026): Volume 05 Issue 01
- Viola Hartmann, Automation-Enhanced Transformation Of Legacy Quality Assurance: Integrating AI-Driven Pipelines For Cloud-Native Enterprise Systems , Emerging Indexing of Global Multidisciplinary Journal: Vol. 5 No. 2 (2026): Volume 05 Issue 2
- Dr. Elena Moretti, Resilient, Automated Monitoring and Fault-Tolerant Control for Critical Building Systems: Integrating GPU-Accelerated Anomaly Detection, Infrastructure-as-Code, and Self-Correcting HVAC Strategies , Emerging Indexing of Global Multidisciplinary Journal: Vol. 4 No. 10 (2025): Volume 04 Issue 10
- Patrick L. Grayson, Behavioral Biometric Intelligence and Regulatory Convergence in Retirement Account Protection: An AI Driven Security Architecture for 401k Platforms , Emerging Indexing of Global Multidisciplinary Journal: Vol. 4 No. 11 (2025): Volume 4 Issue 11 2025
- Owen B. Ashbourne, Automated Compliance and Governance in Cloud-Based Machine Learning Pipelines: Integrating MLOps, Auditability, and Regulatory Automation , Emerging Indexing of Global Multidisciplinary Journal: Vol. 5 No. 2 (2026): Volume 05 Issue 2
- Jeremy S. Blackford, HIPAA as Executable Governance in Cloud Based Clinical Machine Learning Pipelines A Socio Technical and Regulatory Analysis of Automated Auditability and Privacy Preservation , Emerging Indexing of Global Multidisciplinary Journal: Vol. 5 No. 1 (2026): Volume 05 Issue 01
- Dr. Miguel Alvarez, Artificial Intelligence-Driven Transformation of Fleet Management and Sustainable Transportation: Integrated Strategies, Theoretical Foundations, and Practical Implications , Emerging Indexing of Global Multidisciplinary Journal: Vol. 4 No. 11 (2025): Volume 4 Issue 11 2025
- Dr. Rafael M. Cortez, Heterogeneous GPU Architectures, Energy-Aware Thermal Management, and Validation Strategies for Next-Generation High-Performance Computing , Emerging Indexing of Global Multidisciplinary Journal: Vol. 4 No. 10 (2025): Volume 04 Issue 10
- Dr. Lukas Heinrich, Integrative Traffic Intelligence for Dynamic Vehicle Rerouting and Driver Monitoring: A Multilayered Systems Perspective on Congestion Mitigation and Adaptive Urban Mobility , Emerging Indexing of Global Multidisciplinary Journal: Vol. 4 No. 5 (2025): Volume 04 Issue 5
- Dr. Kenji H. Takahashi, Advancing Retail Cloud Security: Integrating Compliance, Resilience, And Devsecops Practices For Next-Generation Operations , Emerging Indexing of Global Multidisciplinary Journal: Vol. 5 No. 2 (2026): Volume 05 Issue 2
You may also start an advanced similarity search for this article.
