Bias Robust Estimation of Scale

Abstract

In this paper we consider the problem of robust estimation of the scale of the location residuals when the underlying distribution of the data belongs to a contamination neighborhood of a parametric location-scale family. We define the class of M-estimates of scale with general location, and show that under certain regularity assumptions, these scale estimates converge to their asymptotic functionals uniformly with respect to the underlying distribution, and with respect to the M-estimate defining score function x. We establish expressions for the maximum asymptotic bias of M-estimates of scale over the contamination neighborhood as a function of the fraction of contamination. Using these expressions we construct asymptotically min-max bias robust estimates of scale. In particular, we show that a scaled version of the Madm (median of absolute residuals about the median) is approximately min-max bias-robust within the class of Huber's proposal 2 joint estimates of location and scale. We also consider the larger class of M-estimates of scale with general location, and show that a scaled version of the Shorth (the shortest half of the data) is approximately min-max bias robust in this class. Finally, we present the results of a Monte Carlo study showing that the Shorth has attractive finite sample size mean squared error properties for contaminated Gaussian data.

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Document Details

Document Type
Technical Report
Publication Date
Aug 01, 1991
Accession Number
ADA245698

Entities

People

  • R. D. Martin
  • Ruben H. Zamar

Organizations

  • University of Washington

Tags

DTIC Thesaurus Topics

  • Anomaly Detection
  • Asymptotic Normality
  • Change Detection
  • Contamination
  • Data Science
  • Distribution Functions
  • Equations
  • Errors
  • Estimators
  • Gaussian Distributions
  • Information Science
  • Monte Carlo Method
  • New York
  • Normal Distribution
  • Residuals
  • Statistical Algorithms
  • Statistics

Fields of Study

  • Mathematics

Readers

  • Operations Research
  • Statistical inference.