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Quantum Entropy Scoring for Fast Robust Mean Estimation and Improved Outlier Detection

Abstract

We study two problems in high-dimensional robust statistics: \emph{robust mean estimation} and \emph{outlier detection}. In robust mean estimation the goal is to estimate the mean μ\mu of a distribution on Rd\mathbb{R}^d given nn independent samples, an ε\varepsilon-fraction of which have been corrupted by a malicious adversary. In outlier detection the goal is to assign an \emph{outlier score} to each element of a data set such that elements more likely to be outliers are assigned higher scores. Our algorithms for both problems are based on a new outlier scoring method we call QUE-scoring based on \emph{quantum entropy regularization}. For robust mean estimation, this yields the first algorithm with optimal error rates and nearly-linear running time O~(nd)\widetilde{O}(nd) in all parameters, improving on the previous fastest running time O~(min(nd/ε6,nd2))\widetilde{O}(\min(nd/\varepsilon^6, nd^2)). For outlier detection, we evaluate the performance of QUE-scoring via extensive experiments on synthetic and real data, and demonstrate that it often performs better than previously proposed algorithms. Code for these experiments is available at https://github.com/twistedcubic/que-outlier-detection .

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