Academic and Scholarly Events

  • 4/25 Statistics Colloquium, Prof. Vince Lyzinski

    Joint UConn/UMass

    STATISTICS COLLOQUIUM

     

    Vince Lyzinski, Assistant Professor

    Department of Mathematics and Statistics

    University of Massachusetts

    Amherst

     

    Information Recovery in Shuffled Graphs via Graph Matching

    ABSTRACT

    While many multiple graph inference methodologies operate under the implicit assumption that an explicit vertex correspondence is known across the vertex sets of the graphs, in practice these correspondences may only be partially or errorfully known. Herein, we provide an information theoretic foundation for understanding the practical impact that errorfully observed vertex correspondences can have on subsequent inference, and the capacity of graph matching methods to recover the lost vertex alignment and inferential performance. Working in the correlated stochastic blockmodel setting, we establish a duality between the loss of mutual information due to an errorfully observed vertex correspondence and the ability of graph matching algorithms to recover the true correspondence across graphs. In the process, we establish a phase transition for graph matchability in terms of the correlation across graphs, and we conjecture the analogous phase transition for the relative information loss due to shuffling vertex labels. We lastly demonstrate the practical effect that graph shuffling— and matching—can have on subsequent inference, with examples from two sample graph hypothesis testing and joint spectral graph clustering.

     

    DATE:  Wednesday, April 25, 2018

    TIME:    4:00 pm - 5:00 pm

    PLACE: Philip E. Austin Bldg., Rm. 108

     

    Coffee will be served at 3:30 pm, AUST 326

    Pizza after colloquium, AUST 326

    For more information, contact: Tracy Burke at tracy.burke@uconn.edu