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Published June 10, 2022 | Version v1
Journal article Open

Robust estimations for semiparametric models: Moments

Creators

  • 1. Institute of Biomathematics

Description

Descriptive statistics for parametric models currently rely heavily on the accuracy of distributional assumptions. Here, leveraging the structures of parametric distributions and their central moment kernel distributions, a class of estimators, consistent simultanously for both a semiparametric distribution and a distinct parametric distribution, is proposed. These efficient estimators are robust to both gross errors and departures from parametric assumptions, making them ideal for estimating the mean and central moments of common unimodal distributions. This article also illuminates the understanding of the common nature of probability distributions and the measures of them.

 

Notes

These papers are prepared for PNAS. The related codes and drafts were shared and have been publically posted on my Github one year ago. I am introducing this work in YouTube and Quora, if you are interested, please visit: Institute of Biomathematics-YouTube or Tuobang Li Quora or Researchgate REDS:Mean or Researchgate REDS:Central Moments or REDS: Invariant Moments or REDS: Non-asymptotic. For more information, please visit Tuobang Li-GitHub. Also, feel free to share it or contact tl@biomathematics.org, for more materials available by request. 

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