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Confidence Intervals for Selected Parameters

2 June 2019
Y. Benjamini
Yotam Hechtlinger
Philip B. Stark
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Abstract

Practical or scientific considerations often lead to selecting a subset of parameters as ``important.'' Inferences about those parameters often are based on the same data used to select them in the first place. That can make the reported uncertainties deceptively optimistic: confidence intervals that ignore selection generally have less than their nominal coverage probability. Controlling the probability that one or more intervals for selected parameters do not cover---the ``simultaneous over the selected'' (SoS) error rate---is crucial in many scientific problems. Intervals that control the SoS error rate can be constructed in ways that take advantage of knowledge of the selection rule. We construct SoS-controlling confidence intervals for parameters deemed the most ``important'' kkk of mmm shift parameters because they are estimated (by independent estimators) to be the largest. The new intervals improve substantially over \v{S}id\'{a}k intervals when kkk is small compared to mmm, and approach the standard Bonferroni-corrected intervals when k≈mk \approx mk≈m. Standard, unadjusted confidence intervals for location parameters have the correct coverage probability for k=1k=1k=1, m=2m=2m=2 if, when the true parameters are zero, the estimators are exchangeable and symmetric.

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