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On Weighted Randomly Trimmed Means

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Abstract

A class of robust location estimators called weighted randomly trimmed means are introduced and not only their consistency and asymptotic normality are proved, but their influence functions, asymptotic variances and breakdown points are also derived. They possess the same breakdown points as the median, and some of them own higher asymptotic relative efficiencies at the heavy-tailed distributions than some other well-known location estimators; whereas the trimmed means, Winsorized means and Huber’s M-estimator possess higher asymptotic relative efficiencies at the light-tailed distributions, in which Huber’s M-estimator is the most robust.

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References

  1. J. W. Tukey, A survey of sampling from contaminated distributions, in Contributions to Probability and Statistics (ed. by I. Olkin et al.), Stanford University Press, Palo Alto, Calif., 1960, 448–485.

  2. J. W. Tukey D. H. Mclaughlin (1963) ArticleTitleLess vulnerable confidence and significance procedures for location based on a single sample: Trimming/Winsorization I Sankhyā A 25 331–352

    Google Scholar 

  3. P. J. Huber (1964) ArticleTitleRobust estimation of a location parameter Ann. Math. Statist. 35 73–101

    Google Scholar 

  4. R. Y. Liu (1990) ArticleTitleOn a notion of data depth based on random simplices Ann. Statist. 18 405–414

    Google Scholar 

  5. Y. Zuo H. Cui X. He (2004) ArticleTitleOn the Stahel–Donoho estimator and depth-weighted means for multivariate data Ann. Statist. 32 169–190

    Google Scholar 

  6. Y. Zuo, Multivariate trimmed means based on data depth, in Statistical Data Analysis Based on the L1-Norm and Related Methods (ed. by Y. Dodge), 2002, 313–322.

  7. Y. Zuo, Trimming with a random fraction of trimmed points, A report at the Joint Meeting of CSPS/IMS, 2005.

  8. H. Cui Y. Tian (1994) ArticleTitleEstimation of the projection absolute median deviation and its application (in chinese) J. Systems Sci. Math. Sci. 14 63–72

    Google Scholar 

  9. F. R. Hampel, Contributions to the theory of robust estimation, PhD thesis, University of California, Berkeley, 1968.

  10. F. R. Hampel (1974) ArticleTitleThe influence curve and its role in robust estimation J. Am. Statist. Assoc. 69 383–393 Occurrence Handle10.2307/2285666

    Article  Google Scholar 

  11. J. A. Reeds (1976) On the definition of von Mises functionals, Research Report S 44 Department of Statistics, Harvard University Cambridge, Mass

    Google Scholar 

  12. D. D. Boos R. J. Serfling (1980) ArticleTitleA note on differentials and the CLT ans LIL for statistical functions, with application to M-estimates Ann. Statist. 8 618–624

    Google Scholar 

  13. P. J. Huber (1981) Robust Statistics Wiley New York Occurrence Handle10.1002/0471725250

    Book  Google Scholar 

  14. D. C. Hoaglin, F. Mosteller, and J. W. Tukey, Understanding Robust and Exploratory Data Analysis, John Wiley & Sons Inc., 1983.

  15. D. L. Donoho and P. J. Huber, The notion of breakdown point, in A Festschrift foe Erich L. Lehmann (ed. by P. J. Bickel, K. A. Doksum, and J. L. Hodges), Wadsworth, Belmont, CA, 1983, 157–184.

  16. D. S. Moore (1968) ArticleTitleAn elementary proof of asymptotic normality of linear functions of order statistics Annals of Mathematical Statistics 39 263–265

    Google Scholar 

  17. X. Chen G. Chai (1993) Nonparametric Statistics (in Chinese) East China Normal University Press Shanghai

    Google Scholar 

  18. F. R. Hampel E. M. Ronchetti P. J. Rousseeuw W. A. Stahel (1986) Robust Statistics: The Approach Based on Influence Functions Wiley New York

    Google Scholar 

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Correspondence to Ting Wang.

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This research is supported by the National Natural Science Foundation of China (Grant No. 10371012, 10231030, and 40574020).

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Wang, T., Li, Y. & Cui, H. On Weighted Randomly Trimmed Means. Jrl Syst Sci & Complex 20, 47–65 (2007). https://doi.org/10.1007/s11424-007-9004-7

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  • DOI: https://doi.org/10.1007/s11424-007-9004-7

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