TrustGuard: GNN-based Robust and Explainable Trust Evaluation with Dynamicity Support
Jie Wang, Zheng Yan, Jiahe Lan, Elisa Bertino, Witold Pedrycz

TL;DR
TrustGuard is a GNN-based trust evaluation model that effectively handles dynamic trust relationships, defends against attacks, and offers explainability through visualization, outperforming existing methods on real-world datasets.
Contribution
The paper introduces TrustGuard, a novel GNN-based trust evaluation framework that supports dynamic trust, enhances robustness against attacks, and provides visual explanations.
Findings
Outperforms state-of-the-art GNN trust models in accuracy
Effective in multi-timeslot trust prediction
Robust against typical trust-related attacks
Abstract
Trust evaluation assesses trust relationships between entities and facilitates decision-making. Machine Learning (ML) shows great potential for trust evaluation owing to its learning capabilities. In recent years, Graph Neural Networks (GNNs), as a new ML paradigm, have demonstrated superiority in dealing with graph data. This has motivated researchers to explore their use in trust evaluation, as trust relationships among entities can be modeled as a graph. However, current trust evaluation methods that employ GNNs fail to fully satisfy the dynamic nature of trust, overlook the adverse effects of trust-related attacks, and cannot provide convincing explanations on evaluation results. To address these problems, we propose TrustGuard, a GNN-based accurate trust evaluation model that supports trust dynamicity, is robust against typical attacks, and provides explanations through…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Access Control and Trust · Privacy-Preserving Technologies in Data
Methodsfail
