Although blocking or pairing before randomization is a basic principle of experimental design, the principle is almost invariably applied to at most one or two blocking variables. Here, we discuss the use of optimal multivariate matching prior to randomization to improve covariate balance for many variables at the same time, presenting an algorithm and a case-study of its performance. The method is useful when all subjects, or large groups of subjects, are randomized at the same time. Optimal matching divides a single group of 2n subjects into n pairs to minimize covariate differences within pairs—the so-called nonbipartite matching problem—then one subject in each pair is picked at random for treatment, the other being assigned to control....
Matching on covariates is a well-established framework for estimating causal effects in observationa...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
A benefit of randomized experiments is that covariate distributions of treatment and control groups ...
Although blocking or pairing before randomization is a basic principle of experimental design, the p...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
When there is a large number of baseline covariates whose imbalance needs to be controlled in sequen...
In randomized trials, pair-matching is an intuitive design strategy to protect study validity and to...
In an effort to detect hidden biases due to failure to control for an unobserved covari-ate, some ob...
In group or cluster-randomized trials (GRTs), matching is a technique that can be used to improve co...
A simulation study is conducted to compare and evaluate recent developments for multivariate matchin...
In group or cluster-randomized trials (GRTs), matching is a technique that can be used to improve co...
Covariate-based constrained randomization of group-randomized trials Lawrence H Moultona Group-rando...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/102047/1/biom12077.pd
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
A benefit of randomized experiments is that covariate distributions of treatment and control groups ...
Although blocking or pairing before randomization is a basic principle of experimental design, the p...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
When there is a large number of baseline covariates whose imbalance needs to be controlled in sequen...
In randomized trials, pair-matching is an intuitive design strategy to protect study validity and to...
In an effort to detect hidden biases due to failure to control for an unobserved covari-ate, some ob...
In group or cluster-randomized trials (GRTs), matching is a technique that can be used to improve co...
A simulation study is conducted to compare and evaluate recent developments for multivariate matchin...
In group or cluster-randomized trials (GRTs), matching is a technique that can be used to improve co...
Covariate-based constrained randomization of group-randomized trials Lawrence H Moultona Group-rando...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/102047/1/biom12077.pd
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
A benefit of randomized experiments is that covariate distributions of treatment and control groups ...