Dear Workshop Community,
Our next meeting will be Wednesday September 11, where Andrea Rotnitzky will present work
on "Efficient adjustment sets for population average causal effect estimation in
graphical models”.
Abstract: Covariate adjustment is often used for estimation of population average causal
effects (ATE). In recent years graphical rules have been derived for determining, from a
causal diagram, all covariate adjustment sets. Restricting attention to causal linear
models, a very recent article introduced two graphical criterions: one to compare the
asymptotic variance of linear regression estimators that control for certain distinct
adjustment sets and a second to identify the optimal adjustment set that provides the
smallest asymptotic variance. In this talk, I will show that the same graphical criterions
can be used in arbitrary causal diagrams when the goal is to minimize the asymptotic
variance of non-parametric estimators of ATE that ignore the causal diagram assumptions.
Furthermore, I will provide a graphical criterion to determine the optimal adjustment set
among the minimal adjustment sets. In addition, I will provide another graphical criterion
for determining when a non-parametric estimator of ATE is as efficient as an efficient
estimator that exploits the causal diagram assumptions. Finally, I will show that for
estimating the effect of time dependent treatments in the presence of time dependent
confounders, there exist diagrams with no optimal adjustment sets.
Where: CGIS Knafel Building, Room K354 (see this link
<https://map.harvard.edu/?bld=04471&level=9> for directions).
When: Wednesday, September 11th at 12 noon - 1:30 pm.
All are welcome! Lunch will be provided.
Best,
Georgie
(Note: the Fall schedule for Gov 3009 can be viewed here
<https://projects.iq.harvard.edu/applied.stats.workshop-gov3009>)
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