Integrating Blockchain-Assisted Transformer-CNN Architectures with Optimal Feature Selection for Robust Real-Time Digital Payment Fraud Mitigation
- Authors
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Sarah Kim
Department of Computational Intelligence and Cyber-Security, University of Toronto, CanadaAuthor
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- Keywords:
- Blockchain Technology, Transformer-CNN Framework, Digital Payment Fraud, Optimal Feature Selection
- Abstract
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The rapid proliferation of digital payment systems has revolutionized the global economic landscape, yet it has simultaneously exposed financial infrastructures to sophisticated fraudulent vectors that bypass traditional rule-based security protocols. This research presents an extensive theoretical and empirical exploration into a novel Blockchain-Assisted Transformer-CNN framework designed for real-time anomaly detection and fraud prevention. By leveraging the immutable ledger capabilities of blockchain technology alongside the predictive power of hybrid deep learning architectures-specifically Convolutional Neural Networks (CNNs) for spatial feature extraction and Transformers for temporal sequence modeling-this study addresses the critical limitations of legacy systems. A central focus is placed on Optimal Feature Selection (OFS) to mitigate the "curse of dimensionality" inherent in high-frequency transactional data, ensuring low-latency execution on resource-constrained edge devices. The methodology elaborates on the convergence of decentralized identity management, multi-factor authentication, and Variational Autoencoders for advanced outlier detection. Theoretical analysis reveals that the integration of blockchain not only ensures data integrity but also provides a decentralized trust network for customizable security challenges. The article concludes that the synergistic application of deep spatial-temporal modeling and distributed ledger technology offers a superior defense mechanism against contemporary cyber threats, including data breaches and malicious attacks that threaten corporate growth. This comprehensive review and framework serve as a foundational pillar for future research in secure, autonomous financial ecosystems.
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Copyright (c) 2026 Sarah Kim (Author)

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