A Discrepancy Detector James Abello, CCICADA-DIMACS FACULTY (www.mgvis.com) Student: Nishchal Devanur CS Dept Rutgers Goal To detect the most influential.

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Presentation transcript:

A Discrepancy Detector James Abello, CCICADA-DIMACS FACULTY ( Student: Nishchal Devanur CS Dept Rutgers Goal To detect the most influential nodes in a variety of traffic scenarios using Discrepancy Theory.

References 1.Graph View, James Abello, F. van Ham and N. Krishnan - "Ask Graph View", IEEE Transactions on Visualization and Computer Graphics, Vol 12. No 5, Gephi – 3.J. Abello, T. Eliassi-Rad, N. Devanur, “Detecting Novel Discrepancies in Communication Networks”, 10 th IEEE International Conference on Data Mining, ICDM10, Dec 2010, Australia