Heuristic Learning with Graph Neural Networks: A Unified Framework for Link Prediction

June 12, 2024 ยท Declared Dead ยท ๐Ÿ› KDD 2024

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Authors Juzheng Zhang, Lanning Wei, Zhen Xu, Quanming Yao arXiv ID 2406.07979 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.IR Citations 0 Venue KDD 2024 Last Checked 4 months ago
Abstract
Link prediction is a fundamental task in graph learning, inherently shaped by the topology of the graph. While traditional heuristics are grounded in graph topology, they encounter challenges in generalizing across diverse graphs. Recent research efforts have aimed to leverage the potential of heuristics, yet a unified formulation accommodating both local and global heuristics remains undiscovered. Drawing insights from the fact that both local and global heuristics can be represented by adjacency matrix multiplications, we propose a unified matrix formulation to accommodate and generalize various heuristics. We further propose the Heuristic Learning Graph Neural Network (HL-GNN) to efficiently implement the formulation. HL-GNN adopts intra-layer propagation and inter-layer connections, allowing it to reach a depth of around 20 layers with lower time complexity than GCN. Extensive experiments on the Planetoid, Amazon, and OGB datasets underscore the effectiveness and efficiency of HL-GNN. It outperforms existing methods by a large margin in prediction performance. Additionally, HL-GNN is several orders of magnitude faster than heuristic-inspired methods while requiring only a few trainable parameters. The case study further demonstrates that the generalized heuristics and learned weights are highly interpretable.
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