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A new perspective on robust $M$-estimation: Finite sample theory and applications to dependence-adjusted multiple testing
- Source :
- Ann. Statist. 46, no. 5 (2018), 1904-1931, Annals of statistics, vol 46, iss 5
- Publication Year :
- 2018
- Publisher :
- The Institute of Mathematical Statistics, 2018.
-
Abstract
- Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a single grossly outlying observation. As argued in the seminal work of Peter Huber in 1973 [{\it Ann. Statist.} {\bf 1} (1973) 799--821], robust alternatives to the method of least squares are sorely needed. To achieve robustness against heavy-tailed sampling distributions, we revisit the Huber estimator from a new perspective by letting the tuning parameter involved diverge with the sample size. In this paper, we develop nonasymptotic concentration results for such an adaptive Huber estimator, namely, the Huber estimator with the tuning parameter adapted to sample size, dimension, and the variance of the noise. Specifically, we obtain a sub-Gaussian-type deviation inequality and a nonasymptotic Bahadur representation when noise variables only have finite second moments. The nonasymptotic results further yield two conventional normal approximation results that are of independent interest, the Berry-Esseen inequality and Cram\'er-type moderate deviation. As an important application to large-scale simultaneous inference, we apply these robust normal approximation results to analyze a dependence-adjusted multiple testing procedure for moderately heavy-tailed data. It is shown that the robust dependence-adjusted procedure asymptotically controls the overall false discovery proportion at the nominal level under mild moment conditions. Thorough numerical results on both simulated and real datasets are also provided to back up our theory.<br />Comment: Ann. Statist. (in press)
- Subjects :
- FOS: Computer and information sciences
Statistics and Probability
Statistics::Theory
false discovery proportion
Statistics & Probability
Mathematics - Statistics Theory
Statistics Theory (math.ST)
01 natural sciences
Least squares
Methodology (stat.ME)
010104 statistics & probability
Huber loss
Robustness (computer science)
62J05
0502 economics and business
FOS: Mathematics
Applied mathematics
stat.TH
Econometrics
62F03
0101 mathematics
Approximate factor model
large-scale multiple testing
Statistics - Methodology
050205 econometrics
Mathematics
secondary 62J05
Applied Mathematics
$M$-estimator
05 social sciences
Statistics
Estimator
M-estimator
math.ST
Nominal level
Sampling distribution
Sample size determination
stat.ME
Primary 62F03
62E17
Bahadur representation
heavy-tailed data
Statistics, Probability and Uncertainty
62F35
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Ann. Statist. 46, no. 5 (2018), 1904-1931, Annals of statistics, vol 46, iss 5
- Accession number :
- edsair.doi.dedup.....fb4e99907b53ac2a72d493a0d607eb7f