Robust Mean Estimation on Highly Incomplete Data with Arbitrary Outliers

Abstract
We study the problem of robustly estimating the mean of a -dimensional distribution given examples, where most coordinates of every example may be missing and examples may be arbitrarily corrupted. Assuming each coordinate appears in a constant factor more than examples, we show algorithms that estimate the mean of the distribution with information-theoretically optimal dimension-independent error guarantees in nearly-linear time . Our results extend recent work on computationally-efficient robust estimation to a more widely applicable incomplete-data setting.
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