高阶GNNs满足效率:稀疏Sobolev图神经网络

IF 3 3区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Signal and Information Processing over Networks Pub Date : 2024-11-20 DOI:10.1109/TSIPN.2024.3503416
Jhony H. Giraldo;Aref Einizade;Andjela Todorovic;Jhon A. Castro-Correa;Mohsen Badiey;Thierry Bouwmans;Fragkiskos D. Malliaros
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引用次数: 0

摘要

图神经网络(gnn)在图中节点之间的关系建模方面显示出巨大的前景,但捕获高阶关系仍然是大规模网络的挑战。以前的研究主要是试图利用图中高阶邻居的信息,涉及到移位算子的幂合并,如图拉普拉斯矩阵或邻接矩阵。这种方法需要权衡计算和内存需求的增加。根据图谱理论,我们得出了一个基本的结论:拉普拉斯矩阵的正则幂和Hadamard幂在谱中的表现是相似的。这一观察结果对于在gnn中捕获高阶信息用于各种任务(如节点分类和半监督学习)具有重要意义。因此,我们提出了一种新的基于图信号的稀疏Sobolev范数的图卷积算子。我们的方法,称为稀疏Sobolev GNN (S2-GNN),使用矩阵之间的Hadamard积来维持图表示中的稀疏度水平。S2-GNN利用级联滤波器,增加阿达玛尔功率,以产生多种功能。我们从理论上分析了S2-GNN的稳定性,以证明该模型对可能的图扰动具有鲁棒性。我们还在各种图挖掘、半监督节点分类和计算机视觉任务中对S2-GNN进行了全面评估。在特定的用例中,我们的算法在性能和运行时间方面与最先进的gnn相比具有竞争力。
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Higher-Order GNNs Meet Efficiency: Sparse Sobolev Graph Neural Networks
Graph Neural Networks (GNNs) have shown great promise in modeling relationships between nodes in a graph, but capturing higher-order relationships remains a challenge for large-scale networks. Previous studies have primarily attempted to utilize the information from higher-order neighbors in the graph, involving the incorporation of powers of the shift operator, such as the graph Laplacian or adjacency matrix. This approach comes with a trade-off in terms of increased computational and memory demands. Relying on graph spectral theory, we make a fundamental observation: the regular and the Hadamard power of the Laplacian matrix behave similarly in the spectrum . This observation has significant implications for capturing higher-order information in GNNs for various tasks such as node classification and semi-supervised learning. Consequently, we propose a novel graph convolutional operator based on the sparse Sobolev norm of graph signals. Our approach, known as Sparse Sobolev GNN (S2-GNN), employs Hadamard products between matrices to maintain the sparsity level in graph representations. S2-GNN utilizes a cascade of filters with increasing Hadamard powers to generate a diverse set of functions. We theoretically analyze the stability of S2-GNN to show the robustness of the model against possible graph perturbations. We also conduct a comprehensive evaluation of S2-GNN across various graph mining, semi-supervised node classification, and computer vision tasks. In particular use cases, our algorithm demonstrates competitive performance compared to state-of-the-art GNNs in terms of performance and running time.
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来源期刊
IEEE Transactions on Signal and Information Processing over Networks
IEEE Transactions on Signal and Information Processing over Networks Computer Science-Computer Networks and Communications
CiteScore
5.80
自引率
12.50%
发文量
56
期刊介绍: The IEEE Transactions on Signal and Information Processing over Networks publishes high-quality papers that extend the classical notions of processing of signals defined over vector spaces (e.g. time and space) to processing of signals and information (data) defined over networks, potentially dynamically varying. In signal processing over networks, the topology of the network may define structural relationships in the data, or may constrain processing of the data. Topics include distributed algorithms for filtering, detection, estimation, adaptation and learning, model selection, data fusion, and diffusion or evolution of information over such networks, and applications of distributed signal processing.
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