CAT: Can Trust be Predicted with Context-Awareness in Dynamic Heterogeneous Networks?
Jie Wang, Zheng Yan, Jiahe Lan, Xuyan Li, Elisa Bertino

TL;DR
This paper introduces CAT, a novel context-aware GNN model that predicts trust in dynamic, heterogeneous networks by capturing temporal, semantic, and contextual information, outperforming existing methods.
Contribution
The paper presents the first GNN-based trust prediction model that incorporates context-awareness, dynamic graph handling, and heterogeneity modeling for improved trust inference.
Findings
Outperforms five baseline models in trust prediction accuracy.
Demonstrates scalability to large-scale graphs.
Shows robustness against trust-oriented and GNN-oriented attacks.
Abstract
Trust prediction provides valuable support for decision-making, risk mitigation, and system security enhancement. Recently, Graph Neural Networks (GNNs) have emerged as a promising approach for trust prediction, owing to their ability to learn expressive node representations that capture intricate trust relationships within a network. However, current GNN-based trust prediction models face several limitations: (i) Most of them fail to capture trust dynamicity, leading to questionable inferences. (ii) They rarely consider the heterogeneous nature of real-world networks, resulting in a loss of rich semantics. (iii) None of them support context-awareness, a basic property of trust, making prediction results coarse-grained. To this end, we propose CAT, the first Context-Aware GNN-based Trust prediction model that supports trust dynamicity and accurately represents real-world…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Adversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI)
