基于转换策略的超网络表示学习

Y. Zhu, Haixing Zhao, Jianqiang Huang, Xiaoying Wang
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引用次数: 0

摘要

在现实生活中,有很多情况是抽象为图的网络无法描述的,但抽象为超图的超网络却可以完美地描述。与网络不同,超网络结构更加复杂,对现有的网络表示学习方法提出了很大的挑战。因此,为了克服超网络结构的挑战,提出了一种具有转换策略的超网络表示学习方法。首先,将线图、关联图和2段图作为超图到图的三种转换策略,结合超边信息,将关联图+ 2段图、线图+关联图和线图+关联图+ 2段图三种类型的积分图组合起来。其次,分别对抽象为关联图、2段图、关联图+ 2段图、线形图+关联图、线形图+关联图+ 2段图的5种网络进行浅神经网络算法训练,得到节点表示向量;最后,在四种不同类型的超网络数据集上进行了评价实验。实验结果表明,2段图的节点分类性能优于其他图,关联图+ 2段图的链接预测性能优于其他图。
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Hypernetwork Representation Learning With the Transformation Strategy
In real life, there are many cases that cannot be described by the network abstracted as the graph, but can be described perfectly by the hypernetwork abstracted as the hypergraph. Different from the network, the hypernetwork structure is more complex and poses a great challenge to the existing network representation learning methods. Therefore, in order to overcome the challenge of the hypernetwork structure, a hypernetwork representation learning method with the transformation strategy is proposed. Firstly, as three types of transformation strategies from the hypergraph to the graph, line graph, incidence graph and 2-section graph are combined into three types of integral graphs with the hyperedge information, namely incidence graph + 2-section graph, line graph + incidence graph and line graph + incidence graph + 2-section graph. Secondly, a shallow neural network algorithm is trained respectively on five types of networks abstracted as incidence graph, 2-section graph, incidence graph + 2-section graph, line graph + incidence graph and line graph +incidence graph + 2-section graph to obtain node representation vectors. Finally, the evaluation experiment is conducted on four different types of hypernetwork datasets. The experimental results demonstrate that the node classification performance of 2-section graph is better than that of other graphs, and the link prediction performance of incidence graph + 2-section graph is better than that of other graphs.
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