International audienceMissing attributes are ubiquitous in causal inference, as they are in most applied statistical work. In this paper, we consider various sets of assumptions under which causal inference is possible despite missing attributes and discuss corresponding approaches to average treatment effect estimation, including generalized propensity score methods and multiple imputation. Across an extensive simulation study, we show that no single method systematically out-performs others. We find, however, that doubly robust modifications of standard methods for average treatment effect estimation with missing data repeatedly perform better than their non-doubly robust baselines; for example, doubly robust generalized propensity score ...
Estimating treatment effects with observational data requires adjustment for confounding at the anal...
Randomized Controlled Trials (RCTs) are often considered as the gold standard to conclude on the cau...
We propose a doubly robust approach to characterizing treatment effect heterogeneity in observationa...
International audienceMissing attributes are ubiquitous in causal inference, as they are in most app...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
In a non-randomized study, a propensity score is the probability of an individual case being in the ...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
Estimation of treatment effect with causal interpretation where treatment is not randomized may be b...
Consider estimating the mean of an outcome in the presence of missing data or estimating population ...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Generalized estimating equations (GEE), proposed by Liang and Zeger (1986), provide a popular method...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Propensity score–based methods or multiple regressions of the outcome are often used for confounding...
Generalized estimating equations (GEE), proposed by Liang and Zeger (1986), provide a popular method...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
Estimating treatment effects with observational data requires adjustment for confounding at the anal...
Randomized Controlled Trials (RCTs) are often considered as the gold standard to conclude on the cau...
We propose a doubly robust approach to characterizing treatment effect heterogeneity in observationa...
International audienceMissing attributes are ubiquitous in causal inference, as they are in most app...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
In a non-randomized study, a propensity score is the probability of an individual case being in the ...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
Estimation of treatment effect with causal interpretation where treatment is not randomized may be b...
Consider estimating the mean of an outcome in the presence of missing data or estimating population ...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Generalized estimating equations (GEE), proposed by Liang and Zeger (1986), provide a popular method...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Propensity score–based methods or multiple regressions of the outcome are often used for confounding...
Generalized estimating equations (GEE), proposed by Liang and Zeger (1986), provide a popular method...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
Estimating treatment effects with observational data requires adjustment for confounding at the anal...
Randomized Controlled Trials (RCTs) are often considered as the gold standard to conclude on the cau...
We propose a doubly robust approach to characterizing treatment effect heterogeneity in observationa...