Covariate balance is one of the fundamental issues in designing experiments for treatment comparisons, especially in randomized clinical trials. In this article, we introduce a new class of covariate-adaptive procedures based on the Simulated Annealing algorithm aimed at balancing the allocations of two competing treatments across a set of pre-specified covariates. Due to the nature of the simulated annealing, these designs are intrinsically randomized, thus completely unpredictable, and very flexible: they can manage both quantitative and qualitative factors and be implemented in a static version as well as sequentially. The properties of the suggested proposal are described, showing a significant improvement in terms of covariate...
AbstractIn many randomized trials, subjects enter the sample sequentially. Because the covariates fo...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Abstract Background In the causal analysis of observational studies, covariates should be carefully ...
Covariate balance is one of the fundamental issues in designing experiments for treatment compariso...
In the context of sequential treatment comparisons, the acquisition of covariate information about t...
In this paper we provide some general asymptotic properties of covariate-adaptive (CA) randomized de...
The first step towards investigating the effectiveness of a treatment via a randomized trial is to s...
This paper considers experimental design based on the strategy of rerandomization to increase the ef...
When there is a large number of baseline covariates whose imbalance needs to be controlled in sequen...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
Rerandomization (Morgan & Rubin, 2012) is designed for the elimination of covariate imbalance at the...
The present paper deals with sequential designs intended to balance the allocations of two competing...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
We consider the conditional randomization test as a way to account for covariate imbalance in random...
In many clinical trials, it is important to balance treatment allocation over covariates. Although a...
AbstractIn many randomized trials, subjects enter the sample sequentially. Because the covariates fo...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Abstract Background In the causal analysis of observational studies, covariates should be carefully ...
Covariate balance is one of the fundamental issues in designing experiments for treatment compariso...
In the context of sequential treatment comparisons, the acquisition of covariate information about t...
In this paper we provide some general asymptotic properties of covariate-adaptive (CA) randomized de...
The first step towards investigating the effectiveness of a treatment via a randomized trial is to s...
This paper considers experimental design based on the strategy of rerandomization to increase the ef...
When there is a large number of baseline covariates whose imbalance needs to be controlled in sequen...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
Rerandomization (Morgan & Rubin, 2012) is designed for the elimination of covariate imbalance at the...
The present paper deals with sequential designs intended to balance the allocations of two competing...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
We consider the conditional randomization test as a way to account for covariate imbalance in random...
In many clinical trials, it is important to balance treatment allocation over covariates. Although a...
AbstractIn many randomized trials, subjects enter the sample sequentially. Because the covariates fo...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Abstract Background In the causal analysis of observational studies, covariates should be carefully ...