Task-Specific Trust Evaluation for Multi-Hop Collaborator Selection via GNN-Aided Distributed Agentic AI
Botao Zhu, Xianbin Wang, Dusit Niyato

TL;DR
This paper introduces GADAI, a GNN-based framework for task-specific trust evaluation in multi-hop device collaboration, improving trust assessment accuracy and privacy preservation for better multi-hop path planning.
Contribution
It proposes a novel GNN-aided trust evaluation framework combined with privacy-preserving resource assessment for distributed multi-hop collaborator selection.
Findings
GADAI outperforms existing algorithms in multi-hop path planning.
The GNN-based trust inference improves reliability evaluation accuracy.
The privacy-preserving resource mechanism ensures secure resource assessment.
Abstract
The success of collaborative task completion among networked devices hinges on the effective selection of trustworthy collaborators. However, accurate task-specific trust evaluation of multi-hop collaborators can be extremely complex. The reason is that their trust evaluation is determined by a combination of diverse trust-related perspectives with different characteristics, including historical collaboration reliability, volatile and sensitive conditions of available resources for collaboration, as well as continuously evolving network topologies. To address this challenge, this paper presents a graph neural network (GNN)-aided distributed agentic AI (GADAI) framework, in which different aspects of devices' task-specific trustworthiness are separately evaluated and jointly integrated to facilitate multi-hop collaborator selection. GADAI first utilizes a GNN-assisted model to infer…
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