Prof. Alexander Volfovsky Department of Statistical Sciences Duke University

Description
Speaker: Prof. Alexander Volfovsky
Department of Statistical Sciences
Duke University
Date and Time: Thursday, 11/10/2018, 3:00 pm -- 4:00 pm
Venue: Ramanujan Hall
Title: Design of experiments for networks with interference

Abstract: Randomized experiments have long been considered to be a gold standard for causal inference. The classical analysis of randomized experiments was developed under simplifying assumptions such as homogeneous treatment effects and no treatment interference leading to theoretical guarantees about the estimators of causal effects. In modern settings where experiments are commonly run on online networks (such as Facebook) or when studying naturally networked phenomena (such as vaccine efficacy) standard randomization schemes do not exhibit the same theoretical properties. To address these issues we develop a randomization scheme that is able to take into account violations of the no interference and no homophily assumptions. Under this scheme, we demonstrate the existence of unbiased estimators with bounded variance. We also provide a simplified and much more computationally tractable randomized design which leads to asymptotically consistent estimators of direct treatment effects under both dense and sparse network regimes.
Description
Ramanujan Hall, Department of Mathematics
Date
Thu, October 11, 2018
Start Time
3:00pm-4:00pm IST
Duration
1 hour
Priority
5-Medium
Access
Public
Created by
DEFAULT ADMINISTRATOR
Updated
Mon, October 8, 2018 10:28am IST