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Highly Efficient Robust and Stable M -Estimates of Location

Author

Listed:
  • Georgy Shevlyakov

    (Department of Applied Mathematics, Peter the Great St. Petersburg Polytechnic University, 195251 St. Petersburg, Russia
    Prof. Georgy Shevlyakov passed away during the revision cycle of the manuscript, comments have been adressed by Dr. Maya Shevlyakova.)

Abstract

This article is partially a review and partially a contribution. The classical two approaches to robustness, Huber’s minimax and Hampel’s based on influence functions, are reviewed with the accent on distribution classes of a non-neighborhood nature. Mainly, attention is paid to the minimax Huber’s M -estimates of location designed for the classes with bounded quantiles and Meshalkin-Shurygin’s stable M -estimates. The contribution is focused on the comparative performance evaluation study of these estimates, together with the classical robust M -estimates under the normal, double-exponential (Laplace), Cauchy, and contaminated normal (Tukey gross error) distributions. The obtained results are as follows: (i) under the normal, double-exponential, Cauchy, and heavily-contaminated normal distributions, the proposed robust minimax M -estimates outperform the classical Huber’s and Hampel’s M -estimates in asymptotic efficiency; (ii) in the case of heavy-tailed double-exponential and Cauchy distributions, the Meshalkin-Shurygin’s radical stable M -estimate also outperforms the classical robust M -estimates; (iii) for moderately contaminated normal, the classical robust estimates slightly outperform the proposed minimax M -estimates. Several directions of future works are enlisted.

Suggested Citation

  • Georgy Shevlyakov, 2021. "Highly Efficient Robust and Stable M -Estimates of Location," Mathematics, MDPI, vol. 9(1), pages 1-10, January.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:1:p:105-:d:475248
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