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Volume: 61 | Article ID: jist0271
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Graph Sampling for Visual Analytics
  DOI :  10.2352/J.ImagingSci.Technol.2017.61.4.040503  Published OnlineJuly 2017
Abstract
Abstract

Effectively visualizing large graphs and capturing the statistical properties are two challenging tasks. To aid in these two tasks, many sampling approaches for graph simplification have been proposed, falling into three categories: node sampling, edge sampling, and traversal-based sampling. It is still unknown which approach is the best. The authors evaluate commonly used graph sampling methods through a combined visual and statistical comparison of graphs sampled at various rates. They conduct their evaluation on three graph models: random graphs, small-world graphs, and scale-free graphs. Initial results indicate that the effectiveness of a sampling method is dependent on the graph model, the size of the graph, and the desired statistical property. This benchmark study can be used as a guideline in choosing the appropriate method for a particular graph sampling task, and the results presented can be incorporated into graph visualization and analysis tools.

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  Cite this article 

Fangyan Zhang, Song Zhang, Pak Chung Wong, "Graph Sampling for Visual Analyticsin Journal of Imaging Science and Technology,  2017,  pp 040503-1 - 040503-11,  https://doi.org/10.2352/J.ImagingSci.Technol.2017.61.4.040503

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Copyright © Society for Imaging Science and Technology 2017
  Article timeline 
  • received July 2016
  • accepted January 2017
  • PublishedJuly 2017

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