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arxiv: 2205.08494 · v3 · pith:P7O5R7WMnew · submitted 2022-05-17 · 🧮 math.ST · cs.DS· math.PR· stat.TH

Covariance Estimation: Optimal Dimension-free Guarantees for Adversarial Corruption and Heavy Tails

classification 🧮 math.ST cs.DSmath.PRstat.TH
keywords achievescovariancedatadimension-freedistributionestimatormarginalmoment
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We provide an estimator of the covariance matrix that achieves the optimal rate of convergence (up to constant factors) in the operator norm under two standard notions of data contamination: We allow the adversary to corrupt an $\eta$-fraction of the sample arbitrarily, while the distribution of the remaining data points only satisfies that the $L_{p}$-marginal moment with some $p \ge 4$ is equivalent to the corresponding $L_2$-marginal moment. Despite requiring the existence of only a few moments, our estimator achieves the same tail estimates as if the underlying distribution were Gaussian. As a part of our analysis, we prove a dimension-free Bai-Yin type theorem in the regime $p > 4$.

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