TY - JOUR
T1 - Selective sign-determining multiple confidence intervals with FCR control
AU - Weinstein, Asaf
AU - Yekutieli, Daniel
N1 - Publisher Copyright:
© 2020 Institute of Statistical Science. All rights reserved.
PY - 2020/1
Y1 - 2020/1
N2 - Given m unknown parameters with corresponding independent estimators, the Benjamini–Hochberg (BH) procedure can be used to classify the signs of the parameters, such that the expected proportion of erroneous directional decisions (directional FDR) is controlled at a preset level q. More ambitiously, our goal is to construct sign-determining confidence intervals—instead of only classifying the sign—such that the expected proportion of noncovering constructed intervals (FCR) is controlled. We suggest a valid procedure that adjusts a marginal confidence interval to construct a maximum number of sign-determining confidence intervals. We propose a new marginal confidence interval, designed specifically for our procedure, that allows us to balance the trade-off between the power and the length of the constructed intervals. We apply our methods to detect the signs of correlations in a highly publicized social neuroscience study and, in a second example, to detect the direction of association for SNPs with Type-2 diabetes in GWAS data. In both examples, we compare our procedure to existing methods and obtain encouraging results.
AB - Given m unknown parameters with corresponding independent estimators, the Benjamini–Hochberg (BH) procedure can be used to classify the signs of the parameters, such that the expected proportion of erroneous directional decisions (directional FDR) is controlled at a preset level q. More ambitiously, our goal is to construct sign-determining confidence intervals—instead of only classifying the sign—such that the expected proportion of noncovering constructed intervals (FCR) is controlled. We suggest a valid procedure that adjusts a marginal confidence interval to construct a maximum number of sign-determining confidence intervals. We propose a new marginal confidence interval, designed specifically for our procedure, that allows us to balance the trade-off between the power and the length of the constructed intervals. We apply our methods to detect the signs of correlations in a highly publicized social neuroscience study and, in a second example, to detect the direction of association for SNPs with Type-2 diabetes in GWAS data. In both examples, we compare our procedure to existing methods and obtain encouraging results.
KW - Confidence intervals
KW - Directional decisions
KW - False coverage rate
KW - False discovery rate
KW - Multiplicity
KW - Selective inference
UR - http://www.scopus.com/inward/record.url?scp=85078917356&partnerID=8YFLogxK
U2 - 10.5705/SS.202017.0316
DO - 10.5705/SS.202017.0316
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AN - SCOPUS:85078917356
SN - 1017-0405
VL - 30
SP - 531
EP - 555
JO - Statistica Sinica
JF - Statistica Sinica
IS - 1
ER -