Clustering Ensemble-based Edge Bundling to Improve the Readability of Graph Drawings

Raissa S. Vieira,Hugo A. D. Do Nascimento, Joelma M. Ferreira,Les Foulds

2022 26th International Conference Information Visualisation (IV)(2022)

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摘要
One of the commonly used techniques to improve the readability of large graph drawings is called edge bundling, which groups edges in such a way that reduces the visual complexity of the drawing. This paper proposes to treat this task as a clustering problem, using compatibility metrics to evaluate the generated solutions in an optimization pipeline, combined with a clustering ensemble approach. The goal was to solve the General-based Edge Bundling (GBEB) problem with relatively low computational costs using a method called Clustering Ensemble-based Edge Bundling (CEBEB) and evaluate the results. CEBEB proved to be a very promising alternative to solve GBEB, since it is capable of generating relatively good solutions with shorter run-times compared to an existing, well-established GBEB method.
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关键词
edge bundling,optimization,clustering ensemble,machine learning
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