GraphScape: integrated multivariate network visualization

Kai Xu, Andrew Cunningham, Seok-Hee Hong, B. Thomas
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引用次数: 21

Abstract

In this paper, we introduce a new method, GraphScape, to visualize multivariate networks, i.e., graphs with multivariate data associated with their nodes. GraphScape adopts a landscape metaphor with network structure displayed on a 2D plane and the surface height in the third dimension represents node attribute. More than one attribute can be visualized simultaneously by using multiple surfaces. In addition, GraphScape can be easily combined with existing methods to further increase the total number of attributes visualized. One of the major goals of GraphScape is to reveal multivariate graph clustering, which is based on both network structure and node attributes. This is achieved by a new layout algorithm and an innovative way of constructing attribute surface, which also allows visual clustering at different scales through interaction. A simplified attribute surface model is also proposed to reduce computation requirement when visualizing large networks. GraphScape is applied to networks of three different size (20, 100, and 1500) to demonstrate its effectiveness.
GraphScape:集成多元网络可视化
在本文中,我们引入了一种新的方法GraphScape来可视化多变量网络,即具有与其节点相关联的多变量数据的图。GraphScape采用景观隐喻,在二维平面上显示网络结构,三维平面高度表示节点属性。通过使用多个曲面,可以同时显示多个属性。此外,GraphScape可以很容易地与现有方法结合使用,以进一步增加可视化属性的总数。GraphScape的主要目标之一是揭示基于网络结构和节点属性的多变量图聚类。这是通过一种新的布局算法和一种创新的属性面构造方法来实现的,并且通过交互实现了不同尺度的视觉聚类。为了减少大型网络可视化的计算量,提出了一种简化的属性面模型。GraphScape应用于三种不同大小的网络(20、100和1500),以证明其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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