Nonparametric Causal Survival Analysis with Clustered Interference

Donglin Zeng Co-Author
University of Michigan
 
Michael Hudgens Co-Author
University of North Carolina at Chapel Hill
 
Chanhwa Lee Speaker
 
Tuesday, Aug 5: 9:35 AM - 9:55 AM
Topic-Contributed Paper Session 
Music City Center 
Inferring treatment effects on a survival time outcome based on data from an observational study is challenging due to the presence of censoring and possible confounding. An additional challenge occurs when a unit's treatment affects the outcome of other units, i.e., there is interference. In some settings, units may be grouped into clusters such that it is reasonable to assume interference only occurs within clusters, i.e., there is clustered interference. In this paper, methods are developed which can accommodate confounding, censored outcomes, and clustered interference. The approach avoids parametric assumptions and permits inference about counterfactual scenarios corresponding to any stochastic policy which modifies the propensity score distribution, and thus may have application across diverse settings. The proposed nonparametric sample splitting estimators allow for flexible data-adaptive estimation of nuisance functions and are consistent and asymptotically normal with parametric convergence rates. Simulation studies demonstrate the finite sample performance of the proposed estimators, and the methods are applied to a cholera vaccine study in Bangladesh.

Keywords

Causal inference

Observational study

Partial interference

Right censoring

Stochastic policy

Treatment effect