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Статья
2021

Robust Semiparametric and Semi-Nonparametric Estimates of Inhomogeneous Experimental Data


V. A. SimakhinV. A. Simakhin, L. G. ShamanaevaL. G. Shamanaeva, A. E. AvdyushinaA. E. Avdyushina
Российский физический журнал
https://doi.org/10.1007/s11182-021-02336-z
Abstract / Full Text

A weighted maximum likelihood method (WMLM) of robust estimation of experimental data with outliers is proposed in this work. The method allows effective robust asymptotically unbiased estimates to be obtained under conditions of aprioristic uncertainty. Based on the WMLM, adaptive robust algorithms have been synthesized for solving semiparametric and semi-nonparametric problems of heterogeneous data processing. It is shown that for heterogeneous data samples, these estimates converge to the maximum likelihood estimates for each distribution from the Tukey supermodel not only in the presence of major, but also minor asymmetric and symmetric outliers.

Author information
  • Kurgan State University, Kurgan, RussiaV. A. Simakhin
  • V. E. Zuev Institute of Atmospheric Optics of the Siberian Branch of the Russian Academy of Sciences, Tomsk, RussiaL. G. Shamanaeva
  • National Research Tomsk State University, Tomsk, RussiaL. G. Shamanaeva
  • ITMO University, Saint Petersburg, RussiaA. E. Avdyushina
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