Path-aware Siamese Graph Neural Network for Link Prediction

10 Aug 2022  ·  Jingsong Lv, Zhao Li, Hongyang Chen, Yao Qi, Chunqi Wu ·

In this paper, we propose a Path-aware Siamese Graph neural network(PSG) for link prediction tasks. First, PSG captures both nodes and edge features for given two nodes, namely the structure information of k-neighborhoods and relay paths information of the nodes. Furthermore, a novel multi-task GNN framework with self-supervised contrastive learning is proposed for differentiation of positive links and negative links while content and behavior of nodes can be captured simultaneously. We evaluate the proposed algorithm PSG on two link property prediction datasets, ogbl-ddi and ogbl-collab. PSG achieves top 1 performance on ogbl-ddi until submission and top 3 performance on ogbl-collab. The experimental results verify the superiority of our proposed PSG

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Link Property Prediction ogbl-ddi PSG Test Hits@20 0.9284 ± 0.0047 # 5
Validation Hits@20 0.8306 ± 0.0134 # 6
Number of params 3499009 # 9
Ext. data No # 1

Methods