A Hierarchical Data Visualization Algorithm: Self-Adapting Sunburst Algorithm

2013 
Sunburst is a hierarchical data visualization method which is filled by radial sectors, for the problem that sectors of Sunburst are placed in disorder and space utilization rate is low, Self-Adapting Sunburst Algorithm (SASA) has been proposed. Nodes are allocated their areas according to their attribute value, and siblings of same parents are made in ascending order according to the size of areas, adjusting the position of sectors. Meanwhile, based on total number of nodes in each layer, SASA dynamically determines width of this circular ring, following the principle "more nodes wider circular ring and fewer nodes thinner circular ring", and in this way, it can optimize the size of nested ring in Sunburst and improve space utilization rate. Finally, User Locating Efficiency (ULE) and Arc Ratio (AR) is put forward to examine SASA, Experimental results show that this algorithm can indeed optimize sector's arrangement, as well as make space utilization better.
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    6
    References
    1
    Citations
    NaN
    KQI
    []