错误发现率
多重比较问题
统计
数学
多元统计
I类和II类错误
简单(哲学)
统计假设检验
无效假设
依赖关系(UML)
计算机科学
人工智能
生物化学
化学
哲学
认识论
基因
作者
Yoav Benjamini,Daniel Yekutieli
出处
期刊:Annals of Statistics
[Institute of Mathematical Statistics]
日期:2001-08-01
卷期号:29 (4)
被引量:10390
标识
DOI:10.1214/aos/1013699998
摘要
Benjamini and Hochberg suggest that the false discovery rate may\nbe the appropriate error rate to control in many applied multiple testing\nproblems. A simple procedure was given there as an FDR controlling procedure\nfor independent test statistics and was shown to be much more powerful than\ncomparable procedures which control the traditional familywise error rate. We\nprove that this same procedure also controls the false discovery rate when the\ntest statistics have positive regression dependency on each of the test\nstatistics corresponding to the true null hypotheses. This condition for\npositive dependency is general enough to cover many problems of practical\ninterest, including the comparisons of many treatments with a single control,\nmultivariate normal test statistics with positive correlation matrix and\nmultivariate $t$. Furthermore, the test statistics may be discrete, and the\ntested hypotheses composite without posing special difficulties. For all other\nforms of dependency, a simple conservative modification of the procedure\ncontrols the false discovery rate. Thus the range of problems for which a\nprocedure with proven FDR control can be offered is greatly increased.
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