博士生讨论班2026[03]
作者:
时间:2026-03-20
阅读量:38次
  • 演讲人: 何京城
  • 时间:2026年3月24日14:00
  • 地点:浙江大学紫金港校区行政楼1417报告厅
  • 主办单位:浙江大学数据科学研究中心

标题:Bringing Closure to False Discovery Rate Control: A General Principle for Multiple Testing

摘要:

We present a novel necessary and sufficient principle for multiple testing methods controlling an expected loss. This principle asserts that every such multiple testing method is a special case of a general closed testing procedure based on e-values. It generalizes the Closure Principle, known to underlie all methods controlling familywise error and tail probabilities of false discovery proportions, to a large class of error rates -- in particular to the false discovery rate (FDR). By writing existing methods as special cases of this procedure, we can achieve uniform improvements, as we demonstrate for the e-Benjamini-Hochberg and the Benjamini-Yekutieli procedures, and the self-consistent method of Su (2018). We also show that methods derived using our novel e-Closure Principle generally control their error rate not just for one rejected set, but simultaneously over many, allowing post hoc flexibility for the researcher.

Moreover, we show that because all multiple testing methods for all error metrics are derived from the same procedure, researchers may even choose the error metric post hoc. Under certain conditions, this flexibility even extends to post hoc choice of the nominal error rate.