块组织拓扑可视化用于签名网络的可视化探索

Xianlin Hu, Leting Wu, Aidong Lu, Xintao Wu
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引用次数: 1

摘要

目前,许多网络同时包含正、负关系,如等级关系、冲突关系等,这些关系往往混杂在以节点链接图和矩阵表示的节点指标为代表的网络可视化布局中。在这项工作中,我们通过强调签名边对网络拓扑的不同影响,提出了一个可视化签名网络的可视化分析框架。可视化分析框架的理论基础来源于高维光谱空间中数据模式的光谱分析。基于谱分析结果,我们提出了一种以矩阵、节点链接和圆弧图混合形式的块组织可视化方法,重点揭示了签名网络的拓扑结构。我们通过一个详细的案例研究证明,块组织可视化和频谱空间探索可以结合起来有效地分析签名网络的拓扑结构。
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Block-Organized Topology Visualization for Visual Exploration of Signed Networks
Many networks nowadays contain both positive and negative relationships, such as ratings and conflicts, which are often mixed in the layouts of network visualization represented by the layouts of node-link diagram and node indices of matrix representation. In this work, we present a visual analysis framework for visualizing signed networks through emphasizing different effects of signed edges on network topologies. The theoretical foundation of the visual analysis framework comes from the spectral analysis of data patterns in the high-dimensional spectral space. Based on the spectral analysis results, we present a block-organized visualization approach in the hybrid form of matrix, node-link, and arc diagrams with the focus on revealing topological structures of signed networks. We demonstrate with a detailed case study that block-organized visualization and spectral space exploration can be combined to analyze topologies of signed networks effectively.
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