Scholarly Colloquia and Events

  • 1/20 Statistics Colloquium, Prof. Ran Xu

    STATISTICS COLLOQUIUM

     

    Ran Xu

    Assistant Professor

    Department of Allied Health Sciences

    University of Connecticut

     

    Identify Contagion Effects in Dynamic Social Networks: A latent-space adjusted approach

     

    Abstract

    Contagion effects, also known as peer effects or social influence process, have become more and more central to social science, especially with the availability of longitudinal social network data. However, contagion effects are usually difficult to identify, as they are often entangled with other factors, such as homophily in the selection process, the individual’s preference for the same social settings, etc. Methods currently available either do not solve these problems or require strong assumptions. Following Shaliziand Thomas (2011), I frame this difficulty as an omitted variable bias problem, and I propose several alternative estimation methods that have potentials to correctly identify contagion effects when there is an unobserved trait that co-determines the influence and the selection. The Monte-Carlo simulation results suggest that a latent-space adjusted estimator is especially promising. It outperforms other estimators that are traditionally used to deal with the unobserved variables, including a structural equation based estimator and an instrumental variable estimator.

     

    Event address for attendees:
    https://uconn-cmr.webex.com/uconn-cmr/onstage/g.php?MTID=e356e69f9e1f5105cafb5d9b0a3cf4c14

    There is also a call-in option: US Toll

    +1-415-655-0002

     

    Access code: 120 246 5294

     

    Date: Wednesday, January 20, 2021

     

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

     

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