Interactive poster: Visual data mining of unevenly-spaced event sequences
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We present a process for the exploration and analysis of large databases of events. A typical database is characterized by the sequential actions of a number of individual entities. These entities can be compared by their similarities in sequence and changes in sequence over time. The correlation of two sequences can provide important clues as to the possibility of a connection between the responsible entities, but an analyst might not be able to specify the type of connection sought prior to examination. Our process incorporates extensive automated calculation and data mining but permits diversity of analysis by providing visualization of results at multiple levels, taking advantage of human intuition and visual processing to generate avenues of inquiry.
[1] Daniel A. Keim,et al. Designing Pixel-Oriented Visualization Techniques: Theory and Applications , 2000, IEEE Trans. Vis. Comput. Graph..
[2] Daniel A. Keim,et al. Information Visualization and Visual Data Mining , 2002, IEEE Trans. Vis. Comput. Graph..
[3] Wolfgang Jank,et al. Representing Unevenly-Spaced Time Series Data for Visualization and Interactive Exploration , 2005, INTERACT.
[4] William Ribarsky,et al. Visual analysis of entity relationships in the Global Terrorism Database , 2008, SPIE Defense + Commercial Sensing.