Near-optimal mean estimators with respect to general norms

06/16/2018
by   Gábor Lugosi, et al.
0

We study the problem of estimating the mean of a random vector in R^d based on an i.i.d. sample, when the accuracy of the estimator is measured by a general norm on R^d. We construct an estimator (that depends on the norm) that achieves an essentially optimal accuracy/confidence tradeoff under the only assumption that the random vector has a well-defined covariance matrix. The estimator is based on the construction of a uniform median-of-means estimator in a class of real valued functions that may be of independent interest.

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