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Hauptverfasser: Oliveira, Roberto I., Resende, Lucas
Format: Preprint
Veröffentlicht: 2023
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2302.06710
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author Oliveira, Roberto I.
Resende, Lucas
author_facet Oliveira, Roberto I.
Resende, Lucas
contents It is well-known that trimmed sample means are robust against heavy tails and data contamination. This paper analyzes the performance of trimmed means and related methods in two novel contexts. The first one consists of estimating expectations of functions in a given family, with uniform error bounds; this is closely related to the problem of estimating the mean of a random vector under a general norm. The second problem considered is that of regression with quadratic loss. In both cases, trimmed-mean-based estimators are the first to obtain optimal dependence on the (adversarial) contamination level. Moreover, they also match or improve upon the state of the art in terms of heavy tails. Experiments with synthetic data show that a natural ``trimmed mean linear regression'' method often performs better than both ordinary least squares and alternative methods based on median-of-means.
format Preprint
id arxiv_https___arxiv_org_abs_2302_06710
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Trimmed sample means for robust uniform mean estimation and regression
Oliveira, Roberto I.
Resende, Lucas
Statistics Theory
62G35
It is well-known that trimmed sample means are robust against heavy tails and data contamination. This paper analyzes the performance of trimmed means and related methods in two novel contexts. The first one consists of estimating expectations of functions in a given family, with uniform error bounds; this is closely related to the problem of estimating the mean of a random vector under a general norm. The second problem considered is that of regression with quadratic loss. In both cases, trimmed-mean-based estimators are the first to obtain optimal dependence on the (adversarial) contamination level. Moreover, they also match or improve upon the state of the art in terms of heavy tails. Experiments with synthetic data show that a natural ``trimmed mean linear regression'' method often performs better than both ordinary least squares and alternative methods based on median-of-means.
title Trimmed sample means for robust uniform mean estimation and regression
topic Statistics Theory
62G35
url https://arxiv.org/abs/2302.06710