Global Multidisciplinary Journal

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Financially Resilient Intelligent Systems: Integrating Machine Learning Architectures, Explainability, and Cross-Domain Evidence for Next-Generation Transaction Fraud Detection

4 Department of Information Systems, University of Tartu, Estonia

Abstract

The global digitization of financial services has intensified the velocity, scale, and complexity of transactional exchanges, thereby elevating the risk landscape associated with fraud, identity theft, and adversarial manipulation. Machine learning has emerged as a foundational technological response to these risks, yet the prevailing literature remains fragmented across application domains, methodological traditions, and epistemological assumptions regarding what constitutes valid evidence of model effectiveness. This article develops a comprehensive, theory-driven and empirically grounded framework for financial fraud detection systems that integrates architectural insights from contemporary machine learning, explainability research, and real-world evidence paradigms. Building upon the seminal work by Modadugu, Prabhala Venkata, and Prabhala Venkata, who demonstrated that hybrid machine learning architectures substantially enhance financial security by aligning algorithmic detection with transactional context (Modadugu et al., 2025), the present study extends their insights into a multi-domain analytical synthesis that situates fraud detection within a broader ecosystem of intelligent systems.

The core argument advanced here is that fraud detection cannot be treated as a narrow classification problem but must be conceptualized as a socio-technical system in which algorithmic inference, regulatory compliance, human oversight, and adversarial adaptation co-evolve. Drawing on pattern recognition theory (Bishop, 2006), explainable artificial intelligence in credit risk (Bussmann et al., 2021), big data analytics for card-not-present fraud (Razaque et al., 2022), and reinforcement learning for financial signal representation (Lei et al., 2020), the article develops a layered methodological architecture that accounts for temporal dynamics, cross-channel data fusion, and interpretability constraints. By weaving together these strands, the study articulates how real-world transactional data, when processed through robust learning pipelines, can yield detection systems that are both empirically powerful and institutionally trustworthy.

Methodologically, the article adopts a design-science orientation grounded in comparative model reasoning rather than numerical benchmarking, in order to align with the requirement that all analytical logic be articulated descriptively. The methodological section therefore elaborates how training regimes, feature engineering strategies, and validation paradigms are theoretically constructed to manage class imbalance, concept drift, and adversarial noise, while remaining compliant with governance and transparency requirements articulated in the explainable AI literature (Assaf and Schumann, 2019; Bussmann et al., 2021). Particular attention is devoted to the way in which pretrained language models and transformer architectures, originally developed for text and vision domains (Li et al., 2022; Popel et al., 2020; Li et al., 2022), can be recontextualized for transaction sequence modeling, thereby enabling cross-modal enrichment of fraud detection signals.

The results presented are interpretive and integrative rather than statistical, demonstrating how the convergence of deep learning, sentiment analysis, and reinforcement learning reshapes the operational meaning of fraud risk in digital markets (Zaman et al., 2023; Lei et al., 2020). These findings are discussed in relation to the economic and organizational implications of artificial intelligence adoption (Brynjolfsson and McAfee, 2017; Gaur et al., 2022), highlighting how trust, explainability, and workforce transformation intersect with technical performance. The discussion further situates fraud detection within the emerging paradigm of real-world evidence, arguing that continuously updated transaction streams function as living laboratories in which model validity is dynamically tested, thereby echoing and extending the architecture proposed by Modadugu et al. (2025).

By synthesizing these diverse literatures into a single coherent analytical narrative, the article contributes a theoretically grounded, policy-relevant, and technologically detailed roadmap for building financially resilient intelligent systems. The conclusions emphasize that future fraud detection research must move beyond isolated algorithmic advances toward integrated, explainable, and context-aware systems that can adapt to the evolving strategies of financial crime while maintaining public trust and regulatory legitimacy.

 

Keywords

References

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How to Cite

Everett D. Langford. (2026). Financially Resilient Intelligent Systems: Integrating Machine Learning Architectures, Explainability, and Cross-Domain Evidence for Next-Generation Transaction Fraud Detection. Global Multidisciplinary Journal, 5(01), 79-91. https://www.grpublishing.org/journals/index.php/gmj/article/view/317

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