Title :
Hierarchical Focus+Context Heterogeneous Network Visualization
Author :
Lei Shi ; Qi Liao ; Hanghang Tong ; Yifan Hu ; Yue Zhao ; Chuang Lin
Author_Institution :
State Key Lab. of Comput. Sci., Inst. of Software, Beijing, China
Abstract :
Aggregation is a scalable strategy for dealing with large network data. Existing network visualizations have allowed nodes to be aggregated based on node attributes or network topology, each of which has its own advantages. However, very few previous systems have the capability to enjoy the best of both worlds. This paper presents OnionGraph, an integrated framework for exploratory visual analysis of large heterogeneous networks. OnionGraph allows nodes to be aggregated based on either node attributes, topology, or a mixture of both. Subsets of nodes can be flexibly split and merged under the hierarchical focus+context interaction model, supporting sophisticated analysis of the network data. Node aggregations that contain subsets of nodes are displayed with multiple concentric circles, or the onion metaphor, indicating how many levels of abstraction they contain. We have evaluated the OnionGraph tool in two real-world cases. Performance experiments demonstrate that on a commodity desktop, OnionGraph can scale to million-node networks while preserving the interactivity for analysis.
Keywords :
data visualisation; graphical user interfaces; OnionGraph; exploratory visual analysis; hierarchical focus+context heterogeneous network visualization; hierarchical focus+context interaction model; large network data visualizations; million-node networks; multiple concentric circles; network topology; node aggregations; node attributes; onion metaphor; Context; Data visualization; Navigation; Network topology; Semantics; Topology; Visualization; Graph visualization; heterogeneous network; visual exploration;
Conference_Titel :
Visualization Symposium (PacificVis), 2014 IEEE Pacific
Conference_Location :
Yokohama
DOI :
10.1109/PacificVis.2014.44