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A new family of robust regression estimators utilizing robust regression tools and supplementary attributes

  • Irsa Sajjad
  • , Muhammad Hanif
  • , Nursel Koyuncu
  • , Usman Shahzad
  • , Nadia H. Al-Noor

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

Zaman and Bulut (2018a) developed a class of estimators for a population mean utilising LMS robust regression and supplementary attributes. In this paper, a family of estimators is proposed, based on the adaptation of the estimators presented by Zaman (2019), followed by the introduction of a new family of regression-type estimators utilising robust regression tools (LAD, H-M, LMS, H-MM, Hampel-M, Tukey-M, LTS) and supplementary attributes. The mean square error expressions of the adapted and proposed families are determined through a general formula. The study demonstrates that the adapted class of the Zaman (2019) estimators is in every case more proficient than that of Zaman and Bulut (2018a). In addition, the proposed robust regression estimators based on robust regression tools and supplementary attributes are more efficient than those of Zaman and Bulut (2018a) and Zaman (2019).The theoretical findings are supported by real-life examples.

Original languageEnglish
Pages (from-to)207-216
Number of pages10
JournalStatistics in Transition New Series
Volume22
Issue number1
DOIs
Publication statusPublished - Mar 2021

Keywords

  • Percentage relative efficiency
  • Ratio-type estimators
  • Robust regression tools
  • SRS
  • Supplementary attributes

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