Scholarly Colloquia and Events

  • 3/3 Math & Statistics Colloquium, Sumit Mukherjee

    MATH & STATISTICS JOINT COLLOQUIUM

     

    Sumit Mukherjee, PhD

    Associate Professor

    Dept. of Statistics

    Columbia University

     

     Motif Counting via Subgraph sampling: A fourth moment phenomenon

     

     

    Abstract

    Consider the subgraph sampling model, where we observe a random subgraph of a given (possibly non random) large graph $G_n$, by choosing vertices of $G_n$ independently at random with probability $p_n$. In this setting, we study the question of estimating the number of copies $N(H,G_n)$ of a fixed motif/small graph (think of $H$ as edges, two stars, triangles) in the big graph $G_n$. We derive necessary and sufficient conditions for the consistency and the asymptotic normality of a natural Horvitz-Thompson (HT) type estimator. 

     

    As it turns out, the asymptotic normality of the HT estimator exhibits an interesting fourth-moment phenomenon, which asserts that the HT estimator (appropriately centered and rescaled) converges in distribution to the standard normal whenever its fourth-moment converges to 3. We apply our results to several natural graph ensembles, such as sparse graphs with bounded degree, Erdős-Renyi random graphs, random regular graphs, and dense graphons.

     

     

     

    Event address for attendees:

    https://uconn-cmr.webex.com/uconn-cmr/onstage/g.php?MTID=e00066bc1007afb5c93b97165b0af7568

     

    There is also a call-in option: US Toll +1-415-655-0002

     
     

    Access code: 120 596 8108

     

    Date: Wednesday, March 3, 2021

     

    Time: 4:00 p.m. EST, 1-hour duration

     

     

      

     

     

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