有符号图嵌入概览:方法与应用

Shrabani Ghosh
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引用次数: 0

摘要

符号图(SG)是一种边上附带符号信息的图。网络的符号可以是正符号、负符号或中性符号。符号网络在现实世界的网络中无处不在,如社交网络、引用网络和各种技术网络。针对同构和异构类型的签名网络,人们提出并开发了许多网络嵌入模型。SG embedding 可以学习网络节点的低维向量表示,有助于完成许多网络分析任务,如链接预测、节点分类和社区检测。在本研究中,我们对 SG 嵌入方法和应用进行了全面研究。我们介绍了 SG 的基本理论和方法,并调查了签名图嵌入方法的技术现状。此外,我们还探讨了不同类型的 SG 嵌入方法在实际场景中的应用。作为一种应用,我们探索了引用网络来分析作者网络。我们还提供了源代码和数据集,以指明未来的发展方向。最后,我们探讨了 SG 嵌入所面临的挑战,并预测了该领域未来的各种研究方向。
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A Survey on Signed Graph Embedding: Methods and Applications
A signed graph (SG) is a graph where edges carry sign information attached to it. The sign of a network can be positive, negative, or neutral. A signed network is ubiquitous in a real-world network like social networks, citation networks, and various technical networks. There are many network embedding models have been proposed and developed for signed networks for both homogeneous and heterogeneous types. SG embedding learns low-dimensional vector representations for nodes of a network, which helps to do many network analysis tasks such as link prediction, node classification, and community detection. In this survey, we perform a comprehensive study of SG embedding methods and applications. We introduce here the basic theories and methods of SGs and survey the current state of the art of signed graph embedding methods. In addition, we explore the applications of different types of SG embedding methods in real-world scenarios. As an application, we have explored the citation network to analyze authorship networks. We also provide source code and datasets to give future direction. Lastly, we explore the challenges of SG embedding and forecast various future research directions in this field.
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