基于基数保留的图神经网络注意机制改进。

Shuo Zhang, Lei Xie
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引用次数: 33

摘要

图神经网络(gnn)对于图结构数据的表示学习具有强大的功能。大多数gnn使用消息传递方案,其中节点的嵌入通过聚合其邻居的信息来迭代更新。为了更好地表达节点的影响,关注机制在聚合中为节点分配可训练的权值。尽管基于注意力的gnn在各种任务中取得了显著的成果,但对其判别能力的清晰认识仍然缺失。在这项工作中,我们对采用注意力机制作为聚合器的GNN的表征特性进行了理论分析。我们的分析确定了那些基于注意力的gnn总是无法区分某些不同结构的所有情况。这些情况的出现是由于在基于注意力的聚合中忽略了基数信息。为了提高基于注意的gnn的性能,我们提出了基数保持注意(CPA)模型,该模型可以应用于任何类型的注意机制。我们在节点和图分类上的实验证实了我们的理论分析,并展示了我们的CPA模型的竞争性能。代码可在网上获得:https://github.com/zetayue/CPA。
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Improving Attention Mechanism in Graph Neural Networks via Cardinality Preservation.

Graph Neural Networks (GNNs) are powerful for the representation learning of graph-structured data. Most of the GNNs use a message-passing scheme, where the embedding of a node is iteratively updated by aggregating the information from its neighbors. To achieve a better expressive capability of node influences, attention mechanism has grown to be popular to assign trainable weights to the nodes in aggregation. Though the attention-based GNNs have achieved remarkable results in various tasks, a clear understanding of their discriminative capacities is missing. In this work, we present a theoretical analysis of the representational properties of the GNN that adopts the attention mechanism as an aggregator. Our analysis determines all cases when those attention-based GNNs can always fail to distinguish certain distinct structures. Those cases appear due to the ignorance of cardinality information in attention-based aggregation. To improve the performance of attention-based GNNs, we propose cardinality preserved attention (CPA) models that can be applied to any kind of attention mechanisms. Our experiments on node and graph classification confirm our theoretical analysis and show the competitive performance of our CPA models. The code is available online: https://github.com/zetayue/CPA.

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