We give algorithms for finding graph clusters and drawing graphs, highlighting local community structure within the context of a larger network. For a given graph G, we use the personalized PageRank vectors to determine a set of clusters, by optimizing the jumping parameter α subject to several cluster variance measures in order to capture the graph structure according to PageRank. We then give a graph visualization algorithm for the clusters using PageRank-based coordinates. Several drawings of real-world data are given, illustrating the partition and local community structure.
CITATION STYLE
Chung, F., & Tsiatas, A. (2012). Finding and visualizing graph clusters using pagerank optimization. Internet Mathematics, 8(1–2), 46–72. https://doi.org/10.1080/15427951.2012.625254
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