Scholarly Colloquia and Events

  • 11/19 Statistics Colloquium, Hongxia Yang, Ph.D.

    DEPARTMENT OF STATISTICS

     

    Statistics Colloquium

    University of Connecticut

    Storrs, Connecticut

     

    The Department of Statistics Cordially invites you to a Colloquium

     

     

    Hongxia Yang, Ph.D.

    IBM Thomas J. Watson Research

    Yorktown Heights, NY

     


    Learning with Dual Heterogeneity:

    A Nonparametric Bayes Model

     

    ABSTRACT

     

    Traditional data mining techniques are designed to model a single type of heterogeneity, such as multi-task learning for modeling task heterogeneity, multi-view learning for modeling view heterogeneity, etc. Recently, a variety of real applications emerged, which exhibit dual heterogeneity, namely both task heterogeneity and view heterogeneity.  Examples include insider threat detection across multiple organizations, web image classification in different domains, etc. Existing methods for addressing such problems typically assume that multiple tasks are equally related and multiple views are equally consistent, which limits their application in complex settings with varying  task relatedness and view consistency. In this paper, we advance state-of-the-art techniques by adaptively modeling task relatedness and view consistency via a nonparametric Bayes model: we model task relatedness using normal penalty with sparse covariances, and view consistency using matrix Dirichlet process. Based on this model, we propose the NOBLE algorithm using an efficient Gibbs sampler. Experimental results on multiple real data sets demonstrate the effectiveness of the proposed algorithm.

     

    DATE:  Wednesday, November 19, 2014

    TIME:    4:00 p.m.

    PLACE: Philip E. Austin Building – Room 105

    Coffee will be served at 3:30 in room 326

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