• DocumentCode
    3606695
  • Title

    Key-Node-Separated Graph Clustering and Layouts for Human Relationship Graph Visualization

  • Author

    Itoh, Takayuki ; Klein, Karsten

  • Author_Institution
    Ochanomizu Univ., Tokyo, Japan
  • Volume
    35
  • Issue
    6
  • fYear
    2015
  • Firstpage
    30
  • Lastpage
    40
  • Abstract
    Many graph-drawing methods apply node-clustering techniques based on the density of edges to find tightly connected subgraphs and then hierarchically visualize the clustered graphs. However, users may want to focus on important nodes and their connections to groups of other nodes for some applications. For this purpose, it is effective to separately visualize the key nodes detected based on adjacency and attributes of the nodes. This article presents a graph visualization technique for attribute-embedded graphs that applies a graph-clustering algorithm that accounts for the combination of connections and attributes. The graph clustering step divides the nodes according to the commonality of connected nodes and similarity of feature value vectors. It then calculates the distances between arbitrary pairs of clusters according to the number of connecting edges and the similarity of feature value vectors and finally places the clusters based on the distances. Consequently, the technique separates important nodes that have connections to multiple large clusters and improves the visibility of such nodes´ connections. To test this technique, this article presents examples with human relationship graph datasets, including a coauthorship and Twitter communication network dataset.
  • Keywords
    graph theory; pattern clustering; Twitter communication network dataset; attribute-embedded graphs; feature value vectors; graph visualization technique; graph-clustering algorithm; graph-drawing methods; human relationship graph datasets; human relationship graph visualization; key-node-separated graph clustering; key-node-separated layouts; node attributes; node connections; node-clustering techniques; subgraphs; Algorithm design and analysis; Clustering algorithms; Data visualization; Graphical user interfaces; Human computer interaction; Image color analysis; computer graphics; graph clustering; graph layout; human relationship graph;
  • fLanguage
    English
  • Journal_Title
    Computer Graphics and Applications, IEEE
  • Publisher
    ieee
  • ISSN
    0272-1716
  • Type

    jour

  • DOI
    10.1109/MCG.2015.115
  • Filename
    7274247