In paired randomized experiments, individuals in a given matched pair may differ on prognostically important covariates despite the best efforts of practitioners.We examine the use of regression adjustment to correct for persistent covariate imbalances after randomization, and present two regression-assisted estimators for the sample average treatment effect in paired experiments. Using the potential outcomes framework, we prove that these estimators are consistent for the sample average treatment effect under mild regularity conditions even if the regression model is improperly specified, and describe how asymptotically conservative confidence intervals can be constructed.We demonstrate that the variances of the regressionassisted estimato...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
In randomized trials, pair-matching is an intuitive design strategy to protect study validity and to...
Randomization is a basis for the statistical inference of treatment effects without strong assumptio...
In paired randomized experiments units are grouped in pairs, often based on covariate information, w...
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...
This paper is concerned with estimation and inference on average treatment effects in randomized con...
Regression adjustment is broadly applied in randomized trials under the premise that it usually impr...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
AbstractRegression adjustments are often made to experimental data. Since randomization does not jus...
In randomized clinical trials, adjustments for baseline covariates at both design and analysis stage...
In randomized experiments, the intention-to-treat parameter is defined as the difference in expected...
Covariate adjustment using linear models for continuous outcomes in randomized trials has been shown...
Randomized trials balance all covariates on average and are the gold standard for estimating treatme...
Adjustment for baseline covariates in randomized trials has been shown to lead to gains in power and...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
In randomized trials, pair-matching is an intuitive design strategy to protect study validity and to...
Randomization is a basis for the statistical inference of treatment effects without strong assumptio...
In paired randomized experiments units are grouped in pairs, often based on covariate information, w...
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...
This paper is concerned with estimation and inference on average treatment effects in randomized con...
Regression adjustment is broadly applied in randomized trials under the premise that it usually impr...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
AbstractRegression adjustments are often made to experimental data. Since randomization does not jus...
In randomized clinical trials, adjustments for baseline covariates at both design and analysis stage...
In randomized experiments, the intention-to-treat parameter is defined as the difference in expected...
Covariate adjustment using linear models for continuous outcomes in randomized trials has been shown...
Randomized trials balance all covariates on average and are the gold standard for estimating treatme...
Adjustment for baseline covariates in randomized trials has been shown to lead to gains in power and...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
In randomized trials, pair-matching is an intuitive design strategy to protect study validity and to...
Randomization is a basis for the statistical inference of treatment effects without strong assumptio...