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vGraph: A Generative Model for Joint Community Detection and Node Representation Learning

机译:vGhagr:联合社区检测和节点表示学习的生成模型

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This paper focuses on two fundamental tasks of graph analysis: community detection and node representation learning, which capture the global and local structures of graphs, respectively. In the current literature, these two tasks are usually independently studied while they are actually highly correlated. We propose a probabilistic generative model called vGraph to learn community membership and node representation collaboratively. Specifically, we assume that each node can be represented as a mixture of communities, and each community is defined as a multinomial distribution over nodes. Both the mixing coefficients and the community distribution are parameterized by the low-dimensional representations of the nodes and communities. We designed an effective variational inference algorithm which regularizes the community membership of neighboring nodes to be similar in the latent space. Experimental results on multiple real-world graphs show that vGraph is very effective in both community detection and node representation learning, outperforming many competitive baselines in both tasks. We show that the framework of vGraph is quite flexible and can be easily extended to detect hierarchical communities.
机译:本文重点介绍了图形分析的两个基本任务:社区检测和节点表示学习,分别捕获图形的全局和局部结构。在当前的文献中,这两个任务通常是独立研究的,而它们实际上是高度相关的。我们提出了一种称为VGraph的概率生成模型,可以协同学习社区成员资格和节点表示。具体地,我们假设每个节点可以表示为社区的混合,并且每个社区被定义为在节点上的多项分布。混合系数和社区分布都是由节点和社区的低维表示参数化的。我们设计了一种有效的变分推理算法,该算法规范了邻居节点的社区成员资格在潜在空间中类似。多个真实图表的实验结果表明,VGupe在社区检测和节点表示学习中非常有效,在两个任务中表现出许多竞争基础。我们表明VGupt的框架非常灵活,可以轻松扩展以检测分层社区。

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