Mean Estimation with Sub-Gaussian Rates in Polynomial Time

September 19, 2018 Β· Declared Dead Β· πŸ› Annals of Statistics

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Authors Samuel B. Hopkins arXiv ID 1809.07425 Category math.ST Cross-listed cs.DS Citations 87 Venue Annals of Statistics Last Checked 2 months ago
Abstract
We study polynomial time algorithms for estimating the mean of a heavy-tailed multivariate random vector. We assume only that the random vector $X$ has finite mean and covariance. In this setting, the radius of confidence intervals achieved by the empirical mean are large compared to the case that $X$ is Gaussian or sub-Gaussian. We offer the first polynomial time algorithm to estimate the mean with sub-Gaussian-size confidence intervals under such mild assumptions. Our algorithm is based on a new semidefinite programming relaxation of a high-dimensional median. Previous estimators which assumed only existence of finitely-many moments of $X$ either sacrifice sub-Gaussian performance or are only known to be computable via brute-force search procedures requiring time exponential in the dimension.
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