Graph Spectral Filtering for Network Simplification

Markus Diego Dias, Fabiano Petronetto, Paola Valdivia, L. G. Nonato
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引用次数: 1

Abstract

Visualization is an important tool in the analysis and understanding of networks and their content. However, visualization tools face major challenges when dealing with large networks, mainly due to visual clutter. In this context, network simplification has been a main alternative to handle massive networks, reducing complexity while preserving relevant patterns of the network structure and content. In this paper we propose a methodology that rely on Graph Signal Processing theory to filter multivariate data associated to network nodes, assisting and enhancing network simplification and visualization tasks. The simplification process takes into account both topological and multivariate data associated to network nodes to create a hierarchical representation of the network. The effectiveness of the proposed methodology is assessed through a comprehensive set of quantitative evaluation and comparisons, which gauge the impact of the proposed filtering process in the simplification and visualization tasks.
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用于网络简化的图谱滤波
可视化是分析和理解网络及其内容的重要工具。然而,可视化工具在处理大型网络时面临着主要的挑战,主要是由于视觉混乱。在这种情况下,网络简化已成为处理大规模网络的主要替代方案,在保留网络结构和内容的相关模式的同时降低复杂性。在本文中,我们提出了一种依赖于图信号处理理论的方法来过滤与网络节点相关的多元数据,帮助和增强网络简化和可视化任务。简化过程考虑了与网络节点相关的拓扑和多变量数据,以创建网络的分层表示。通过一套全面的定量评估和比较来评估所提出方法的有效性,这些评估和比较衡量了所提出的过滤过程在简化和可视化任务中的影响。
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