检验统计量
协变量
推论
多重比较问题
统计假设检验
p值
统计
无效假设
估计员
数学
统计的
限制随机化
价值(数学)
计算机科学
随机化
人工智能
临床试验
医学
病理
作者
Jitendra Ganju,Guo‐guang Ma
标识
DOI:10.1177/0962280214538016
摘要
The conventional approach to hypothesis testing for formal inference is to prespecify a single test statistic thought to be optimal. However, we usually have more than one test statistic in mind for testing the null hypothesis of no treatment effect but we do not know which one is the most powerful. Rather than relying on a single p-value, combining p-values from prespecified multiple test statistics can be used for inference. Combining functions include Fisher's combination test and the minimum p-value. Using randomization-based tests, the increase in power can be remarkable when compared with a single test and Simes's method. The versatility of the method is that it also applies when the number of covariates exceeds the number of observations. The increase in power is large enough to prefer combined p-values over a single p-value. The limitation is that the method does not provide an unbiased estimator of the treatment effect and does not apply to situations when the model includes treatment by covariate interaction.
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