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Activity Number: 266 - Recent Advances in Statistical Network Analysis with Applications
Type: Invited
Date/Time: Wednesday, August 11, 2021 : 1:30 PM to 3:20 PM
Sponsor: Section on Statistical Graphics
Abstract #314441
Title: Causal Inference for Contagious Processes on Networks
Author(s): Forrest W. Crawford*
Companies: Yale University
Keywords: causal inference ; vaccine; network; contagion
Abstract:

Causal identification of treatment effects for infectious disease outcomes in interconnected populations is challenging because infection outcomes may be transmissible to others, and treatment given to one individual may affect others’ outcomes. For example, a vaccine given to an individual embedded in a network may affect their risk of infection given exposure to an infectious neighbor, and their transmissibility to neighbors if they do become infected. Several statistical frameworks have been proposed to measure causal treatment effects in this setting, including structural transmission models, mediation-based partnership models, and randomized trial designs. However, existing estimands for infectious disease intervention effects are of limited conceptual usefulness: Some are parameters in a structural model whose causal interpretation is unclear, others are causal effects defined only in a restricted two-person setting and not in general networks, and still others are nonparametric estimands that arise naturally in the context of a randomized trial but may not measure any biologically meaningful effect. In this paper, we describe a unifying formalism for defining nonparametric s


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