时序化静态图形自动编码器来处理时序网络

Mounir Haddad, Cécile Bothorel, P. Lenca, Dominique Bedart
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引用次数: 1

摘要

图自编码器(GAE),也称为图嵌入方法,在低维空间中学习图节点的潜在表示,其中结构信息被保留。虽然现实世界的图通常是动态的,但只有少数嵌入方法处理时间维度:尽管它们已经证明了它们的可靠性,但大多数嵌入技术处理静态网络的情况,并且在应用于时间网络时表现不佳。本文提出了一种通用的静态图自编码器时间化方法,即根据时间网络的情况,采用不同的静态图嵌入方法。这可以通过学习时间步长图之间的最佳连接来实现,从而形成一个合并的时空网络。我们证明了这极大地提高了时间化方法的推理任务的准确性。我们还表明,学习到的连接与节点特征直接相关,并且可以在其设计的嵌入范围之外使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporalizing static graph autoencoders to handle temporal networks
Graph autoencoders (GAE), also known as graph embedding methods, learn latent representations of the nodes of a graph in a low-dimensional space where the structural information is preserved. While real-world graphs are generally dynamic, only a few embedding methods handle the temporal dimension: Even though they have proven their reliability, the majority of the embedding techniques address the case of static networks and present poor performances when applied to temporal ones. In this paper, we present a generic method to temporalize static graph autoencoders, i.e. adapt different static graph embedding methods to the case of temporal networks. This is made possible by learning optimal connections between timesteps' graphs in order to form a single merged spatio-temporal network. We prove that this highly improves the inference tasks' accuracy of the temporalized methods. We also show that the learned connections are directly related to nodes characteristics and can be used beyond the scope of the embedding they are designed for.
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