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Time-uniform, nonparametric, nonasymptotic confidence sequences

Steven R. Howard, Aaditya Ramdas, Jon McAuliffe, Jasjeet Sekhon

2021The Annals of Statistics102 citationsDOIOpen Access PDF

Abstract

A confidence sequence is a sequence of confidence intervals that is uniformly valid over an unbounded time horizon. Our work develops confidence sequences whose widths go to zero, with nonasymptotic coverage guarantees under nonparametric conditions. We draw connections between the Cramér–Chernoff method for exponential concentration, the law of the iterated logarithm (LIL) and the sequential probability ratio test—our confidence sequences are time-uniform extensions of the first; provide tight, nonasymptotic characterizations of the second; and generalize the third to nonparametric settings, including sub-Gaussian and Bernstein conditions, self-normalized processes and matrix martingales. We illustrate the generality of our proof techniques by deriving an empirical-Bernstein bound growing at a LIL rate, as well as a novel upper LIL for the maximum eigenvalue of a sum of random matrices. Finally, we apply our methods to covariance matrix estimation and to estimation of sample average treatment effect under the Neyman–Rubin potential outcomes model.

Topics & Concepts

MathematicsLaw of the iterated logarithmNonparametric statisticsSequence (biology)CDF-based nonparametric confidence intervalMatrix (chemical analysis)Confidence intervalApplied mathematicsLogarithmConfidence distributionIterated functionCoverage probabilityStatisticsRandom matrixCovariance matrixCombinatoricsUpper and lower boundsSample size determinationEigenvalues and eigenvectorsGeneralityAlgorithmDiscrete mathematicsExponential functionIterated logarithmRobust confidence intervalsExponential familySample (material)Mathematical optimizationCalculus (dental)Statistical Methods and InferenceRandom Matrices and ApplicationsAdvanced Causal Inference Techniques
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