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CHI
2010
ACM

Graphemes: self-organizing shape-based clustered structures for network visualisations

14 years 7 months ago
Graphemes: self-organizing shape-based clustered structures for network visualisations
Network visualisations use clustering approaches to simplify the presentation of complex graph structures. We present a novel application of clustering algorithms, which controls the visual arrangement of the vertices in a cluster to explicitly encode information about that cluster. Our technique arranges parts of the graph into symbolic shapes, depending on the relative size of each cluster. Early results suggest that this layout augmentation helps viewers make sense of a graph’s scale and number of elements, while facilitating recall of graph features, and increasing stability in dynamic graph scenarios. Keywords Dynamic graphs, graph drawing, visual memory. ACM Classification Keywords H.5.0. Information interfaces and presentation (e.g., HCI): General. General Terms Human Factors, Theory.
Ross Shannon, Aaron J. Quigley, Paddy Nixon
Added 17 May 2010
Updated 17 May 2010
Type Conference
Year 2010
Where CHI
Authors Ross Shannon, Aaron J. Quigley, Paddy Nixon
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