Scholarly Colloquia and Events

  • 9/19 Statistics Colloquium, Junxian Geng

    STATISTICS COLLOQUIUM

     

    Junxian Geng

    Senior Biostatistician

    Boehringer Ingelheim

     

    Probabilistic Community Detection with Unknown Number of Communities

     

    Abstract

     

    A fundamental problem in network analysis is clustering the nodes into groups which share a similar connectivity pattern. Existing algorithms for community detection assume the knowledge of the number of clusters or estimate it a priori using various selection criteria and subsequently estimate the community structure. Ignoring the uncertainty in the first stage may lead to erroneous clustering, particularly when the community structure is vague. We instead propose a coherent probabilistic framework for simultaneous estimation of the number of communities and the community structure, adapting recently developed Bayesian nonparametric techniques to network models. An efficient Markov chain Monte Carlo (MCMC) algorithm is proposed which obviates the need to perform reversible jump MCMC on the number of clusters. The methodology is shown to outperform recently developed community detection algorithms in a variety of synthetic data examples and in benchmark real-datasets. Using an appropriate metric on the space of all configurations, we develop nonasymptotic Bayes risk bounds even when the number of clusters is unknown.  Enroute, we develop concentration properties of nonlinear functions of Bernoulli random variables, which may be of independent interest in analysis of related models.

     

    DATE:  Wednesday, September 19, 2018

    TIME:    4:00 pm

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

    Coffee will be served at 3:30 pm in the Noether Lounge (AUST 326)

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