理解超越重叠集群的网络

V. Guchev, Simone Angelini, G. Amati
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引用次数: 0

摘要

与大型复杂集群网络调查相关的任务在各个研究领域都很普遍。在流行和常见的探索性分析方法中,基于节点链接的图形可视化绝对值得强调。然而,尽管基于节点链接的工具很流行,但其图形设计和拓扑的几何表示几乎总是由自发的空间结构形成,或者相反,由过于严格的有序安排形成。多元数据结构的转换可能性可以通过使用部分有序集进行分组,在视觉混沌和视觉原性之间找到合适的图形平衡。本文以Twitter社区研究为任务,提出了一种数据建模方法,并结合一套可视化技术,为重叠网络集群的分析探索提供了一套方便、可感知的交互工具集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Networks beyond Overlapping Clusters
Tasks associated with the investigation of large complex clustered networks are widespread in various research areas. Among the popular and common approaches to exploratory analysis, it is definitely worthwhile to underscore the node-link-based graph visualization. However, despite the prevalence of node-link-based tools, its graphic design and geometric representation of topology almost invariably formed by a spontaneous spatial structure, or on the contrary, by a too rigidly ordered arrangement. Transformation possibilities of multivariate data structures may allow finding a suitable graphic balance between optic chaos and visual primitiveness by the use of partially ordered sets for grouping. By taking the studying of Twitter communities as a task, the paper presents a data modelling method in conjunction with a set of visualization techniques, which implement a convenient and perceivable interactive toolset for analytical exploration of overlapping network clusters.
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