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On the Distance Between Mean and Geometric Median in High Dimensions

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Mathias Drton

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Abstract

The geometric median, a notion of center for multivariate distributions, has gained recent attention in robust statistics and machine learning. Although conceptually distinct from the mean (i.e., expectation), we demonstrate that both are very close in high dimensions when the dependence between the distribution components is suitably controlled. Concretely, we find an upper bound on the distance that vanishes with the dimension asymptotically, and derive a rate-matching first order expansion of the geometric median components. Simulations illustrate and confirm our results.

article SD26


Statistics and Probability Letters

Early Access.110679. Feb. 2026.
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Authors

R. Schwank • M. Drton

Links

DOI

Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: SD26

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