Staged Animation Strategies for Online Dynamic Networks
Tarik Crnovrsanin, Shilpika, Senthil Chandrasegaran, and Kwan-Liu Ma

TL;DR
This paper compares different animation staging strategies for online dynamic networks, introducing a hybrid approach that balances timeliness and clarity, supported by user studies involving experts and participants.
Contribution
It introduces a novel hybrid animation staging strategy for online dynamic networks and evaluates its effectiveness through user studies.
Findings
Hybrid approach improves comprehension in dynamic network visualization.
Strategies emphasizing comprehension lead to better response times and accuracy.
Complex network changes may require iterative staging, which the hybrid approach facilitates.
Abstract
Dynamic networks -- networks that change over time -- can be categorized into two types: offline dynamic networks, where all states of the network are known, and online dynamic networks, where only the past states of the network are known. Research on staging animated transitions in dynamic networks has focused more on offline data, where rendering strategies can take into account past and future states of the network. Rendering online dynamic networks is a more challenging problem since it requires a balance between timeliness for monitoring tasks -- so that the animations do not lag too far behind the events -- and clarity for comprehension tasks -- to minimize simultaneous changes that may be difficult to follow. To illustrate the challenges placed by these requirements, we explore three strategies to stage animations for online dynamic networks: time-based, event-based, and a new…
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Taxonomy
TopicsData Visualization and Analytics · Complex Network Analysis Techniques · Scientific Computing and Data Management
