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Hierarchical graph attention networks for semi-supervised node classification

机译:分层图注意半监督节点分类网络

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摘要

Recently, there has been a promising tendency to generalize convolutional neural networks (CNNs) to graph domain. However, most of the methods cannot obtain adequate global information due to their shallow structures. In this paper, we address this challenge by proposing a hierarchical graph attention network (HGAT) for semi-supervised node classification. This network employs a hierarchical mechanism for the learning of node features. Thus, more information can be effectively obtained of the node features by iteratively using coarsening and refining operations on different hierarchical levels. Moreover, HGAT combines with the attention mechanism in the input and prediction layer. It can assign different weights to different nodes in a neighborhood, which helps to improve accuracy. Experiment results demonstrate that state-of-the-art performance was achieved by our method, not only on Cora, Citeseer, and Pubmed citation datasets, but also on the simplified NELL knowledge graph dataset. The sensitive analysis further verifies that HGAT can capture global structure information by increasing the receptive field, as well as the effective transfer of node features.
机译:最近,有希望将卷积神经网络(CNNS)概括为图形域。然而,由于其浅层的结构,大多数方法无法获得充足的全局信息。在本文中,我们通过提出用于半监督节点分类的分层图注意网络(HGAT)来解决这一挑战。该网络采用分层机制来学习节点功能。因此,可以通过在不同层级上迭代地使用粗化和精炼操作来有效地获得节点特征的更多信息。此外,HGAT与输入和预测层中的注意机制相结合。它可以将不同的权重分配给邻域中的不同节点,这有助于提高准确性。实验结果表明,通过我们的方法实现了最先进的性能,而不仅仅是在Cora,CITESEER和PUBMED引文数据集上,而且还实现了简化的NELL知识图数据集。敏感性分析进一步验证了HGAT可以通过增加接收领域来捕获全局结构信息,以及节点特征的有效传输。

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