聚合图神经网络

Fernando Gama, A. Marques, Alejandro Ribeiro, G. Leus
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引用次数: 8

摘要

图神经网络(gnn)通过利用支持图数据的底层不规则结构对经典神经网络进行正则化,将其应用扩展到更广泛的数据领域。本文提出的聚合GNN是一种新颖的GNN,它利用了在单个节点上通过与相邻节点的连续本地交换收集的数据呈现规则结构的事实。因此,规则卷积和规则池化产生一个适当正则化的GNN。为了解决在单个节点上收集所有信息时出现的一些可扩展性问题,我们提出了一个多节点聚合GNN,该GNN构建区域特征,然后聚合成更多的全局特征,等等。我们在合成图的源定位问题和作者归属问题上表现出优异的性能。
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Aggregation Graph Neural Networks
Graph neural networks (GNNs) regularize classical neural networks by exploiting the underlying irregular structure supporting graph data, extending its application to broader data domains. The aggregation GNN presented here is a novel GNN that exploits the fact that the data collected at a single node by means of successive local exchanges with neighbors exhibits a regular structure. Thus, regular convolution and regular pooling yield an appropriately regularized GNN. To address some scalability issues that arise when collecting all the information at a single node, we propose a multi-node aggregation GNN that constructs regional features that are later aggregated into more global features and so on. We show superior performance in a source localization problem on synthetic graphs and on the authorship attribution problem.
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