Minimum Hellinger Distance Estimation for Normal Models

Abstract

A robust estimator introduced by Beran (1977a, 1977b) which is based on the minimum Hellinger distance between a projection model density and a nonparametric sample density is studied empirically. An extensive simulation provides an estimate of the small sample distribution and supplies empirical evidence of the estimator performance for a normal location-scale model. Empirical robustness is also investigated, with performance competitive with that obtained from M-estimator and Cramer-von Mises minimum distance estimators. The minimum Hellinger distance estimator is shown to be an exception to the usual perception that a robust estimator cannot achieve full efficiency. Beran also introduced a goodness-of-fit statistic, H squared, based on the minimized Hellinger distance between a member of a parametric family of densities and a nonparametric density estimate. We investigate the statistic H (the square root H squared) as a test for normality when both location and scale are unspecified. Empirically derived critical values are given which do not require extensive tables. The power of the statistic H is compared with four other widely used tests for normality. Keywords: Minimum distance, Robustness, Efficiency, Nonparametric.

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Document Details

Document Type
Technical Report
Publication Date
Oct 31, 1990
Accession Number
ADA228714

Entities

People

  • Paul W. Eslinger
  • Wayne A. Woodward

Organizations

  • Southern Methodist University

Tags

Communities of Interest

  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Accuracy
  • Algorithms
  • Computations
  • Data Science
  • Data Sets
  • Distribution Functions
  • Estimators
  • Goodness Of Fit Tests
  • Information Processing
  • Information Science
  • Normal Distribution
  • Random Variables
  • Scale Models
  • Square Roots
  • Statistical Algorithms
  • Statistics
  • Theorems

Fields of Study

  • Mathematics

Readers

  • Statistical inference.