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Main Authors: Adrover, Jorge G., Ruiz, Marcelo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.07383
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author Adrover, Jorge G.
Ruiz, Marcelo
author_facet Adrover, Jorge G.
Ruiz, Marcelo
contents The concept of statistical depth extends the notions of the median and quantiles to other statistical models. These procedures aim to formalize the idea of identifying deeply embedded fits to a model that are less influenced by contamination. In the multivariate case, Tukey's median was a groundbreaking concept for multivariate location estimation, and its counterpart for scatter matrices has recently attracted considerable interest. The breakdown point and the maximum asymptotic bias are key concepts used to summarize an estimator's behavior under contamination. We explicitly obtain the maximum bias curve, contamination sensitivity and breakdown point of the deepest scatter matrices. In the multivariate and regression setting we analyse recently introduced error bounds that provide a unified framework for studying both the statistical convergence rate and robustness of Tukey's median, depth-based scatter matrices and multivariate regression estimators. We observe that slight variations in these inequalities allow us to visualize the maximum bias behavior of the deepest estimators. We also point out that all the halfspace depths under consideration can be obtained from a unifying concept called residual smallness depth. A numerical study is performed to compare the finite sample bias performance of several robust estimators in the multivariate setting.
format Preprint
id arxiv_https___arxiv_org_abs_2505_07383
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bias robustness of depth estimators in multivariate settings
Adrover, Jorge G.
Ruiz, Marcelo
Statistics Theory
The concept of statistical depth extends the notions of the median and quantiles to other statistical models. These procedures aim to formalize the idea of identifying deeply embedded fits to a model that are less influenced by contamination. In the multivariate case, Tukey's median was a groundbreaking concept for multivariate location estimation, and its counterpart for scatter matrices has recently attracted considerable interest. The breakdown point and the maximum asymptotic bias are key concepts used to summarize an estimator's behavior under contamination. We explicitly obtain the maximum bias curve, contamination sensitivity and breakdown point of the deepest scatter matrices. In the multivariate and regression setting we analyse recently introduced error bounds that provide a unified framework for studying both the statistical convergence rate and robustness of Tukey's median, depth-based scatter matrices and multivariate regression estimators. We observe that slight variations in these inequalities allow us to visualize the maximum bias behavior of the deepest estimators. We also point out that all the halfspace depths under consideration can be obtained from a unifying concept called residual smallness depth. A numerical study is performed to compare the finite sample bias performance of several robust estimators in the multivariate setting.
title Bias robustness of depth estimators in multivariate settings
topic Statistics Theory
url https://arxiv.org/abs/2505.07383