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Transitivity-Preserving Graph Representation Learning for Bridging Local Connectivity and Role-Based Similarity

Van Thuy Hoang, O‐Joun Lee

2024Proceedings of the AAAI Conference on Artificial Intelligence11 citationsDOIOpen Access PDF

Abstract

Graph representation learning (GRL) methods, such as graph neural networks and graph transformer models, have been successfully used to analyze graph-structured data, mainly focusing on node classification and link prediction tasks. However, the existing studies mostly only consider local connectivity while ignoring long-range connectivity and the roles of nodes. In this paper, we propose Unified Graph Transformer Networks (UGT) that effectively integrate local and global structural information into fixed-length vector representations. First, UGT learns local structure by identifying the local sub-structures and aggregating features of the k-hop neighborhoods of each node. Second, we construct virtual edges, bridging distant nodes with structural similarity to capture the long-range dependencies. Third, UGT learns unified representations through self-attention, encoding structural distance and p-step transition probability between node pairs. Furthermore, we propose a self-supervised learning task that effectively learns transition probability to fuse local and global structural features, which could then be transferred to other downstream tasks. Experimental results on real-world benchmark datasets over various downstream tasks showed that UGT significantly outperformed baselines that consist of state-of-the-art models. In addition, UGT reaches the third-order Weisfeiler-Lehman power to distinguish non-isomorphic graph pairs.

Topics & Concepts

Bridging (networking)Transitive relationGraphComputer scienceMathematicsTheoretical computer scienceArtificial intelligenceCombinatoricsComputer networkAdvanced Graph Neural NetworksTopic ModelingRecommender Systems and Techniques