带属性随机游走的循环网络图

Xiao Huang, Qingquan Song, Yuening Li, Xia Hu
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引用次数: 72

摘要

随机漫步广泛应用于从网络嵌入到标签传播等各种网络分析任务中。它可以捕获几何结构并将其转换为结构化序列,同时减轻了稀疏性和维数诅咒问题。尽管在普通网络上的随机漫步已经被深入研究,但在现实世界的系统中,节点通常不是纯粹的顶点,而是具有不同的特征,由与它们相关的丰富数据集描述。这些节点属性包含丰富的信息,这些信息通常是对网络的补充,并为基于随机行走的分析带来了机会。然而,目前尚不清楚如何为属性网络开发随机漫步,以实现有效的联合信息提取。节点属性使节点交互更加复杂,并且相对于拓扑结构是异构的。为了弥补这一差距,我们探索在属性网络上执行联合随机行走,并利用它们来促进深度节点表示学习。所提出的框架GraphRNA由两个主要部分组成,即协作行走机制(AttriWalk)和为随机行走定制的深度嵌入架构(GRN)。AttriWalk将节点属性视为一个二部网络,并利用它来推动行走更加多样化,减轻向高中心性节点收敛的倾向。AttriWalk使我们能够将突出的深度网络嵌入模型,图卷积网络,推进到更有效的体系结构- GRN。GRN使节点表示能够以与原始属性网络中的节点交互相同的方式进行交互。在真实数据集上的实验结果表明,与目前最先进的嵌入算法相比,GraphRNA是有效的。
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Graph Recurrent Networks With Attributed Random Walks
Random walks are widely adopted in various network analysis tasks ranging from network embedding to label propagation. It could capture and convert geometric structures into structured sequences while alleviating the issues of sparsity and curse of dimensionality. Though random walks on plain networks have been intensively studied, in real-world systems, nodes are often not pure vertices, but own different characteristics, described by the rich set of data associated with them. These node attributes contain plentiful information that often complements the network, and bring opportunities to the random-walk-based analysis. However, it is unclear how random walks could be developed for attributed networks towards an effective joint information extraction. Node attributes make the node interactions more complicated and are heterogeneous with respect to topological structures. To bridge the gap, we explore to perform joint random walks on attributed networks, and utilize them to boost the deep node representation learning. The proposed framework GraphRNA consists of two major components, i.e., a collaborative walking mechanism - AttriWalk, and a tailored deep embedding architecture for random walks, named graph recurrent networks (GRN). AttriWalk considers node attributes as a bipartite network and uses it to propel the walking more diverse and mitigate the tendency of converging to nodes with high centralities. AttriWalk enables us to advance the prominent deep network embedding model, graph convolutional networks, towards a more effective architecture - GRN. GRN empowers node representations to interact in the same way as nodes interact in the original attributed network. Experimental results on real-world datasets demonstrate the effectiveness of GraphRNA compared with the state-of-the-art embedding algorithms.
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