期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Covariate balancing based on kernel density estimates for controlled experiments
1
作者 Yiou Li lulu kang Xiao Huang 《Statistical Theory and Related Fields》 2021年第2期102-113,共12页
Controlled experiments are widely used in many applications to investigate the causal relationship between input factors and experimental outcomes.A completely randomised design is usually used to randomly assign trea... Controlled experiments are widely used in many applications to investigate the causal relationship between input factors and experimental outcomes.A completely randomised design is usually used to randomly assign treatment levels to experimental units.When covariates of the experimental units are available,the experimental design should achieve covariate balancing among the treatment groups,such that the statistical inference of the treatment effects is not confounded with any possible effects of covariates.However,covariate imbalance often exists,because the experiment is carried out based on a single realisation of the complete randomisation.It is more likely to occur and worsen when the size of the experimental units is small or moderate.In this paper,we introduce a new covariate balancing criterion,which measures the differences between kernel density estimates of the covariates of treatment groups.To achieve covariate balance before the treatments are randomly assigned,we partition the experimental units by minimising the criterion,then randomly assign the treatment levels to the partitioned groups.Through numerical examples,weshow that the proposed partition approach can improve the accuracy of the difference-in-mean estimator and outperforms the complete randomisation and rerandomisation approaches. 展开更多
关键词 Covariate balance controlled experiment completely randomised design difference-in-mean estimator kernel density estimation rerandomisation
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部