Sarcouncil Journal of Applied Sciences Aims & Scope

Sarcouncil Journal of Applied Sciences

An Open access peer reviewed international Journal
Publication Frequency- Monthly
Publisher Name-SARC Publisher

ISSN Online- 2945-3437
Country of origin-PHILIPPINES
Impact Factor- 3.78, ICV-64
Language- English

Keywords

Editors

The Trust Triad Paradigm: A Theoretical Framework for AI Meta-Risk Management in Critical Industries

Keywords: Trust Triad Paradigm, Federated Learning, Explainable AI, Reinforcement Learning, AI Risk Management.

Abstract: The rapid evolution of artificial intelligence and machine learning technologies has created unprecedented opportunities for intelligent automation in finance and supply chain management, while simultaneously introducing complex challenges related to privacy preservation, regulatory compliance, and stakeholder trust. This article introduces the "trust triad" paradigm, a theoretical framework that positions Reinforcement Learning, Federated Learning, and Explainable AI as interdependent components essential for successful AI deployment in high-stakes environments. Through a comprehensive analysis of current applications and emerging trends, this article demonstrates that the synergistic integration of these three paradigms addresses fundamental tensions between performance optimization and transparency requirements that have historically limited AI adoption in regulated industries. The article examines how Reinforcement Learning enables dynamic optimization in uncertain environments, Federated Learning facilitates privacy-preserving collaboration across organizational boundaries, and Explainable AI provides the interpretability necessary for regulatory compliance and stakeholder confidence. Empirical analysis of financial services and supply chain implementations reveals that organizations pursuing integrated approaches achieve superior outcomes compared to isolated technology deployments, particularly in areas such as credit risk assessment, fraud detection, supply chain risk management, and collaborative intelligence development. However, this integration also introduces a new category of "meta-risks" associated with AI systems themselves, requiring expanded governance frameworks and specialized expertise development within risk management functions. The article identifies critical implementation challenges, including model interpretability barriers, communication bottlenecks in federated networks, algorithmic bias risks, and the need for continuous monitoring and validation processes. Future research directions emphasize the importance of standardized benchmarking environments, interdisciplinary collaboration models, and industry-academia partnerships to advance theoretical understanding while addressing practical implementation requirements. The article suggests that successful adoption of the trust triad paradigm requires organizational commitment to change management processes, investment in specialized capabilities, and development of holistic risk management frameworks that can address both traditional business risks and AI-induced vulnerabilities, ultimately enabling organizations to harness the transformative potential of intelligent automation while maintaining ethical responsibility and stakeholder trust.

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