Agentic Trust Coordination for Federated Learning through Adaptive Thresholding and Autonomous Decision Making in Sustainable and Resilient Industrial Networks
arXiv cs.AI / 3/27/2026
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Key Points
- The paper introduces a lightweight, server-side “Agentic Trust Control Layer” to improve federated learning reliability in sustainable, resilient industrial networks with heterogeneous and resource-constrained devices.
- It addresses issues caused by inconsistent client behavior, noisy sensing, and faulty/adversarial updates, moving beyond fixed-parameter or purely reactive trust mechanisms.
- The approach continuously observes trust and system signals over time, reasons about instability, and then applies targeted trust adjustments to keep federated training stable.
- The framework separates observation, reasoning, and action to enable context-aware intervention decisions without requiring client-side training changes or increasing communication overhead.
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