Generative Model for Node Generation

Boyu Zhang, Xin Wang, Kai Liu
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Abstract

We present a generative model applied to graph-structured data for node generation by incorporating the graph convolutional architecture and semi-supervised learning with variational auto-encoder. This idea is motivated by successful applications of deep generative models for images and speeches. However, when applied to graph-structured data, especially social network data, existing deep generative models usually don't work: these models can not learn underlying distributions of social network data effectively. In order to address this problem, we construct a deep generative model, using architectures and techniques that prove to be effective for modelling network data in practice. Experimental results show that our model can successfully learn the underlying distribution from the social network dataset, and generate reasonable nodes, which can be altered by varying latent variables. This provides us a way to study social network data in the same way we study image data.
节点生成的生成模型
通过结合图卷积结构和带变分自编码器的半监督学习,提出了一种用于图结构数据节点生成的生成模型。这个想法是由图像和演讲的深度生成模型的成功应用所激发的。然而,当应用于图结构数据,特别是社交网络数据时,现有的深度生成模型通常不起作用:这些模型不能有效地学习社交网络数据的底层分布。为了解决这个问题,我们构建了一个深度生成模型,使用的架构和技术在实践中被证明是有效的网络数据建模。实验结果表明,我们的模型能够成功地从社交网络数据集中学习到底层分布,并生成合理的节点,这些节点可以通过改变潜在变量来改变。这为我们提供了一种研究社交网络数据的方法,就像我们研究图像数据一样。
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