Jackknife and Bootstrap Inference in Regression and a Class of Representations for the LSE.

Abstract

A class of representations for the least squares estimator is presented and their applications sketched. Partly motivated by one such representation, the author proposes a class of weighted jackknife estimators of variance of the least squares estimator by deleting any fixed number of observations at a time. These estimators are unbiased for homoscedastic errors and a special case, the delete-one jackknife variance estimator, is almost unbiased for heteroscedastic errors. The method is extended in various ways, including the use of the the jackknife histogram, for variance and interval estimation with nonlinear parameters. Three bootstrap methods are considered. It is shown that none of them has the robustness property enjoyed by the (weighted) delete-on jackknife. Subset sampling with variable subset size is also considered. Several bias-reducing estimators are proposed. They are motivated by the observation that bias-reduction is mathematically equivalent to unbiased estimation of variance. Some simulation results on estimating the ratio of two normal parameters are reported. (Author)

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Document Details

Document Type
Technical Report
Publication Date
Apr 01, 1984
Accession Number
ADA141505

Entities

People

  • C. F. J. Wu

Organizations

  • University of Wisconsin–Madison

Tags

Communities of Interest

  • C4I

DTIC Thesaurus Topics

  • Algorithms
  • Biodiesels
  • Computations
  • Data Science
  • Estimators
  • Histograms
  • Information Science
  • Intervals
  • Mathematics
  • Observation
  • Probability
  • Regression Analysis
  • Sampling
  • Statistical Algorithms
  • Statistics
  • Surveys
  • United States

Fields of Study

  • Mathematics

Readers

  • Statistical inference.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference