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Large graph simplification, clustering and visualization.

机译:大型图简化,聚类和可视化。

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摘要

This dissertation investigates novel approaches for analysis and visualization of two kinds of graph, scale-free network and rooted hierarchy, at large scales with thousands to millions of nodes.;Scale-free network, whose node degree distribution follows a power-law function, often arises in sociology, financial analysis, and the sciences. Such graphs are usually densely connected and far from planar, which makes their visualizations very challenging. We thus present two novel approaches, a simplification method and a clustering method, that analyze graph structure and generate effective visualizations. The simplification method ranks graph edges and removes "unimportant" ones to clarify the visualization. Whereas the clustering method clusters nodes into affinity groups and renders edges between different groups as curve bundles to create more structured visualizations. To efficiently process large graphs, we propose GPU algorithms for accelerating several centrality metrics that are commonly used to rank graph nodes/edges.;Rooted hierarchy is commonly used to represent hierarchical data (e.g. file system, genealogy) and facilitate visualization of complex graphs. Large hierarchies are often very irregular with non-uniform node degrees, which makes them challenging to visualize using existing non-adaptive methods. We thus introduce a circular tree drawing method that adapts the visualization either automatically according to the hierarchy or interactively based on user actions.;We demonstrated those methods with several applications and real world data sets to show that they provide better visualization, exploration, and understanding of large graphs.
机译:本文研究了无标度网络和根层次的两种图形的大规模分析和可视化的新方法,该图具有成千上万个节点。节点度分布遵循幂律函数的无标度网络;经常出现在社会学,财务分析和科学领域。这样的图通常紧密连接并且远离平面,这使其可视化非常具有挑战性。因此,我们提出了两种新颖的方法,一种简化方法和一种聚类方法,可以分析图形结构并生成有效的可视化效果。简化方法对图形边缘进行排序,并删除“无关紧要”的边缘以阐明可视化效果。而聚类方法将节点聚类为亲和性组,并将不同组之间的边缘渲染为曲线束以创建更结构化的可视化效果。为了有效地处理大型图形,我们提出了GPU算法来加速几种常用的度量指标,这些指标通常用于对图形节点/边进行排序。;有根层次结构通常用于表示层次结构数据(例如文件系统,族谱)并有助于复杂图形的可视化。大型层次结构通常具有非常不规则的节点度,节点度不均匀,这使得使用现有的非自适应方法进行可视化具有很大的挑战性。因此,我们引入了一种圆形树形绘制方法,该方法可以根据层次结构自动地或根据用户操作以交互方式适应可视化。;我们通过多个应用程序和现实世界数据集演示了这些方法,以表明它们提供了更好的可视化,探索和理解大图。

著录项

  • 作者

    Jia, Yuntao.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 114 p.
  • 总页数 114
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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