Data-Driven Adjustment for Multiple Treatments
By: Sara LaPlante, Sofia Triantafillou, Emilija Perković
Potential Business Impact:
Finds causes without knowing all the rules.
Covariate adjustment is one method of causal effect identification in non-experimental settings. Prior research provides routes for finding appropriate adjustments sets, but much of this research assumes knowledge of the underlying causal graph. In this paper, we present two routes for finding adjustment sets that do not require knowledge of a graph -- and instead rely on dependencies and independencies in the data directly. We consider a setting where the adjustment set is unaffected by treatment or outcome. The first route shows how to extend prior research in this area using a concept known as c-equivalence. Our second route provides sufficient criteria for finding adjustment sets in the setting of multiple treatments.
Similar Papers
Complete Characterization for Adjustment in Summary Causal Graphs of Time Series
Statistics Theory
Finds hidden causes in past events.
A Unified Approach to Covariate Adjustment for Survival Endpoints in Randomized Clinical Trials
Methodology
Makes medical studies more accurate with patient info.
On Efficient Estimation of Distributional Treatment Effects under Covariate-Adaptive Randomization
Econometrics
Improves study results by balancing groups better.