Semantic Chain-of-Trust: Autonomous Trust Orchestration for Collaborator Selection via Hypergraph-Aided Agentic AI
Botao Zhu, Xianbin Wang, and Dusit Niyato

TL;DR
This paper introduces a semantic chain-of-trust model using agentic AI and hypergraphs to improve trust evaluation and collaborator selection in distributed systems, achieving high accuracy and efficiency.
Contribution
It presents a novel semantic trust model combined with hypergraph-based management and autonomous AI agents for dynamic, multi-hop collaborator selection.
Findings
Achieves 100% accuracy in trust evaluation based on historical data.
Enables fast, resource-efficient collaborator selection.
Supports multi-hop trust chains for complex collaboration scenarios.
Abstract
The effective completion of tasks in collaborative systems hinges on task-specific trust evaluations of potential devices for distributed collaboration. Due to independent operation of devices involved, dynamic evolution of their mutual relationships, and complex situation-related impact on trust evaluation, effectively assessing devices' trust for collaborator selection is challenging. To overcome this challenge, we propose a semantic chain-of-trust model implemented with agentic AI and hypergraphs for supporting effective collaborator selection. We first introduce a concept of semantic trust, specifically designed to assess collaborators along multiple semantic dimensions for a more accurate representation of their trustworthiness. To facilitate intelligent evaluation, an agentic AI system is deployed on each device, empowering it to autonomously perform necessary operations,…
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Taxonomy
TopicsAccess Control and Trust · Advanced Memory and Neural Computing · IoT and Edge/Fog Computing
