Casual Visual Exploration of Large Bipartite Graphs Using Hierarchical Aggregation and Filtering

Daniel Steinböck, E. Gröller, Manuela Waldner
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引用次数: 8

Abstract

Bipartite graphs are typically visualized using linked lists or matrices. However, these classic visualization techniques do not scale well with the number of nodes. Biclustering has been used to aggregate edges, but not to create linked lists with thousands of nodes. In this paper, we present a new casual exploration interface for large, weighted bipartite graphs, which allows for multi-scale exploration through hierarchical aggregation of nodes and edges using biclustering in linked lists. We demonstrate the usefulness of the technique using two data sets: a database of media advertising expenses of public authorities and author-keyword co-occurrences from the IEEE Visualization Publication collection. Through an insight-based study with lay users, we show that the biclustering interface leads to longer exploration times, more insights, and more unexpected findings than a baseline interface using only filtering. However, users also perceive the biclustering interface as more complex.
使用层次聚合和过滤的大型二部图的随意视觉探索
二部图通常使用链表或矩阵进行可视化。然而,这些经典的可视化技术不能很好地随节点数量的增加而扩展。双聚类已经被用于聚合边,但没有用于创建包含数千个节点的链表。在本文中,我们提出了一个新的随机探索界面,用于大型加权二部图,它允许在链表中使用双聚类通过节点和边的分层聚集进行多尺度探索。我们使用两个数据集证明了该技术的实用性:一个是公共机构的媒体广告费用数据库,另一个是来自IEEE可视化出版物集合的作者关键词共现。通过对非专业用户的基于洞察力的研究,我们表明,与仅使用过滤的基线界面相比,双聚类界面可以带来更长的探索时间、更多的洞察力和更多意想不到的发现。然而,用户也认为双聚类界面更复杂。
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