Learning Community Embedding with Community Detection and Node Embedding on Graphs

Sandro Cavallari, V. Zheng, Hongyun Cai, K. Chang, E. Cambria
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引用次数: 331

Abstract

In this paper, we study an important yet largely under-explored setting of graph embedding, i.e., embedding communities instead of each individual nodes. We find that community embedding is not only useful for community-level applications such as graph visualization, but also beneficial to both community detection and node classification. To learn such embedding, our insight hinges upon a closed loop among community embedding, community detection and node embedding. On the one hand, node embedding can help improve community detection, which outputs good communities for fitting better community embedding. On the other hand, community embedding can be used to optimize the node embedding by introducing a community-aware high-order proximity. Guided by this insight, we propose a novel community embedding framework that jointly solves the three tasks together. We evaluate such a framework on multiple real-world datasets, and show that it improves graph visualization and outperforms state-of-the-art baselines in various application tasks, e.g., community detection and node classification.
用社区检测和图上的节点嵌入学习社区嵌入
在本文中,我们研究了图嵌入的一个重要但尚未充分开发的设置,即嵌入社区而不是每个单独的节点。我们发现社区嵌入不仅对社区级应用(如图形可视化)有用,而且对社区检测和节点分类都有好处。要学习这种嵌入,我们的洞察力取决于社区嵌入、社区检测和节点嵌入之间的闭环。一方面,节点嵌入有助于改进社区检测,从而输出好的社区以拟合更好的社区嵌入;另一方面,社区嵌入可以通过引入社区感知的高阶邻近来优化节点嵌入。在此指导下,我们提出了一个新的社区嵌入框架,共同解决这三个任务。我们在多个真实世界的数据集上评估了这样的框架,并表明它改善了图形可视化,并且在各种应用任务中优于最先进的基线,例如社区检测和节点分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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