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Jointly Learning Representations of Nodes and Attributes for Attributed Networks

机译:共同学习归属网络节点和属性的陈述

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Previous embedding methods for attributed networks aim at learning low-dimensional vector representations only for nodes but not for both nodes and attributes, resulting in the fact that node embeddings cannot be directly used to recover the correlations between nodes and attributes. However, capturing such correlations by embeddings is of great importance for many real-world applications, such as attribute inference and user profiling. Moreover, in real-world scenarios, many attributed networks evolve over time, with their nodes, links, and attributes changing from time to time. In this article, we study the problem of jointly learning low-dimensional representations of both nodes and attributes for static and dynamic attributed networks. To address this problem, we propose a Co-embedding model for Static Attributed Networks (CSAN), which jointly learns low-dimensional representations of both attributes and nodes in the same semantic space such that their affinities can be effectively captured and measured, and a Co-embedding model for Dynamic Attributed Networks (CDAN) to dynamically track low-dimensional representations of nodes and attributes over time. To obtain effective embeddings, both our co-embedding models, CSAN and CDAN, embed each node and attribute with means and variances of Gaussian distributions via variational auto-encoders. Our CDAN model formulates the dynamic changes of a dynamic attributed network by aggregating perturbation features from the nodes' local neighborhoods as well as attributes' associations such that the evolving patterns of the given network can be tracked. Experimental results on real-world networks demonstrate that our proposed embedding models outperform state-of-the-art non-dynamic and dynamic embedding models.
机译:以前的嵌入方法对于归属网络仅用于学习仅用于节点的低维矢量表示,而不是用于两个节点和属性,导致节点嵌入式不能直接用于恢复节点和属性之间的相关性。然而,对嵌入式的这种相关性对于许多真实世界应用程序来说是非常重要的,例如属性推理和用户分析。此外,在现实世界的场景中,许多归属网络随着时间的推移而发展,他们的节点,链接和属性不时更改。在本文中,我们研究了静态和动态归属网络共同学习节点和属性的低维表示的问题。为了解决这个问题,我们提出了一种用于静态归属网络(CSAN)的共嵌入模型,该模型(CSAN)共同了解了相同语义空间中的两个属性和节点的低维表示,使得它们可以有效地捕获和测量它们的亲和力,以及一个动态归属网络(CDAN)的共同嵌入模型,动态跟踪节点和属性的低维表示随时间。为了获取有效的嵌入式,我们的共同嵌入模型,CSAN和CDAN都将每个节点和属性与高斯分布的手段和差异嵌入,通过变化自动编码器。我们的CDAN模型通过从节点的本地邻域和属性的关联聚合扰动特征来制定动态归属网络的动态变化,使得可以跟踪给定网络的不断发展模式。实验结果对现实网络的实验结果表明,我们提出的嵌入模型优于最先进的非动态和动态嵌入模型。

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