Regression adjustment is broadly applied in randomized trials under the premise that it usually improves the precision of a treatment effect estimator. However, previous work has shown that this is not always true. To further understand this phenomenon, we develop a unified comparison of the asymptotic variance of a class of linear regression-adjusted estimators. Our analysis is based on the classical theory for linear regression with heteroscedastic errors and thus does not assume that the postulated linear model is correct. For a completely randomized binary treatment, we provide sufficient conditions under which some regression-adjusted estimators are guaranteed to be more asymptotically efficient than others. We explore other settings s...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
In randomized experiments, the intention-to-treat parameter is defined as the difference in expected...
We focus on estimating the average treatment effect in clinical trials that involve stratified rando...
This paper is concerned with estimation and inference on average treatment effects in randomized con...
AbstractRegression adjustments are often made to experimental data. Since randomization does not jus...
In this paper I provide new evidence on the implications of treatment effect heterogeneity for least...
In paired randomized experiments, individuals in a given matched pair may differ on prognostically i...
Researchers often use linear regression to analyse randomized experiments to improve treatment effec...
Randomized experiments are the gold standard for causal inference, and justify simple comparisons ac...
In randomized clinical trials, adjustments for baseline covariates at both design and analysis stage...
We study the interpretation of regressions with multiple treatments and flexible controls. Such regr...
Covariate adjustment using linear models for continuous outcomes in randomized trials has been shown...
Background: It has become common practice to analyze randomized experiments using linear regression ...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
Covariate adjustment in the randomized trial context refers to an estimator of the average treatme...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
In randomized experiments, the intention-to-treat parameter is defined as the difference in expected...
We focus on estimating the average treatment effect in clinical trials that involve stratified rando...
This paper is concerned with estimation and inference on average treatment effects in randomized con...
AbstractRegression adjustments are often made to experimental data. Since randomization does not jus...
In this paper I provide new evidence on the implications of treatment effect heterogeneity for least...
In paired randomized experiments, individuals in a given matched pair may differ on prognostically i...
Researchers often use linear regression to analyse randomized experiments to improve treatment effec...
Randomized experiments are the gold standard for causal inference, and justify simple comparisons ac...
In randomized clinical trials, adjustments for baseline covariates at both design and analysis stage...
We study the interpretation of regressions with multiple treatments and flexible controls. Such regr...
Covariate adjustment using linear models for continuous outcomes in randomized trials has been shown...
Background: It has become common practice to analyze randomized experiments using linear regression ...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
Covariate adjustment in the randomized trial context refers to an estimator of the average treatme...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
In randomized experiments, the intention-to-treat parameter is defined as the difference in expected...
We focus on estimating the average treatment effect in clinical trials that involve stratified rando...