用于链路预测的邻域重叠感知图神经网络

Seongjun Yun, Seoyoon Kim, Junhyun Lee, Jaewoo Kang, Hyunwoo J. Kim
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引用次数: 42

摘要

图神经网络(Graph Neural Networks, gnn)用于对图结构数据进行学习,已被广泛应用于各个领域。在节点分类和图分类等任务中,它们比传统的启发式方法有了显著的改进。然而,由于gnn严重依赖于平滑的节点特征而不是图结构,因此它们在链路预测方面的性能往往不如简单的启发式方法,因为结构信息(例如重叠的邻域、度和最短路径)至关重要。为了解决这一限制,我们提出了邻域重叠感知图神经网络(neo - gnn),它从邻接矩阵中学习有用的结构特征,并估计重叠的邻域以进行链路预测。我们的neo - gnn推广了基于邻域重叠的启发式方法,并处理重叠的多跳邻域。我们在开放图基准数据集(OGB)上的大量实验表明,neo - gnn在链路预测中始终达到最先进的性能。我们的代码可以在https://github.com/seongjunyun/Neo_GNNs上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neo-GNNs: Neighborhood Overlap-aware Graph Neural Networks for Link Prediction
Graph Neural Networks (GNNs) have been widely applied to various fields for learning over graph-structured data. They have shown significant improvements over traditional heuristic methods in various tasks such as node classification and graph classification. However, since GNNs heavily rely on smoothed node features rather than graph structure, they often show poor performance than simple heuristic methods in link prediction where the structural information, e.g., overlapped neighborhoods, degrees, and shortest paths, is crucial. To address this limitation, we propose Neighborhood Overlap-aware Graph Neural Networks (Neo-GNNs) that learn useful structural features from an adjacency matrix and estimate overlapped neighborhoods for link prediction. Our Neo-GNNs generalize neighborhood overlap-based heuristic methods and handle overlapped multi-hop neighborhoods. Our extensive experiments on Open Graph Benchmark datasets (OGB) demonstrate that Neo-GNNs consistently achieve state-of-the-art performance in link prediction. Our code is publicly available at https://github.com/seongjunyun/Neo_GNNs.
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