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引用次数: 2

摘要

近年来,图神经网络(GNNs)已成为许多与图相关的任务(包括图分类)的强大技术。当前的GNN模型采用不同的图池化方法,减少节点和边的数量,以分层的方式学习图的高阶结构。所有这些方法主要依赖于一跳邻域。然而,他们没有考虑图的高阶结构。在这项工作中,我们提出了一种多通道基于motif的图池方法(MPool),该方法通过结合基于选择和聚类的池化操作来捕获具有motif和局部和全局图结构的高阶图结构。作为第一个通道,我们通过设计考虑节点基序邻接性的节点排序模型,发展了基于节点选择的图池化。作为第二个通道,我们通过设计一个基于基序邻接的谱聚类模型来开发基于聚类的图池。作为最后一层,每个通道的结果被聚合成最终的图形表示。我们在8个基准数据集上进行了广泛的实验,并表明我们提出的方法在图分类任务中比基线方法具有更好的准确性。
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MPool: Motif-Based Graph Pooling
Graph Neural networks (GNNs) have recently become a powerful technique for many graph-related tasks including graph classification. Current GNN models apply different graph pooling methods that reduce the number of nodes and edges to learn the higher-order structure of the graph in a hierarchical way. All these methods primarily rely on the one-hop neighborhood. However, they do not consider the higher- order structure of the graph. In this work, we propose a multi-channel Motif-based Graph Pooling method named (MPool) captures the higher-order graph structure with motif and local and global graph structure with a combination of selection and clustering-based pooling operations. As the first channel, we develop node selection-based graph pooling by designing a node ranking model considering the motif adjacency of nodes. As the second channel, we develop cluster-based graph pooling by designing a spectral clustering model using motif adjacency. As the final layer, the result of each channel is aggregated into the final graph representation. We perform extensive experiments on eight benchmark datasets and show that our proposed method shows better accuracy than the baseline methods for graph classification tasks.
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