Open Access
June, 1990 An Ancillarity Paradox Which Appears in Multiple Linear Regression
Lawrence D. Brown
Ann. Statist. 18(2): 471-493 (June, 1990). DOI: 10.1214/aos/1176347602

Abstract

Consider a multiple linear regression in which $Y_i, i = 1, \cdots, n$, are independent normal variables with variance $\sigma^2$ and $E(Y_i) = \alpha + V'_i\beta$, where $V_i \in \mathbb{R}^r$ and $\beta \in \mathbb{R}^r.$ Let $\hat{\alpha}$ denote the usual least squares estimator of $\alpha$. Suppose that $V_i$ are themselves observations of independent multivariate normal random variables with mean 0 and known, nonsingular covariance matrix $\theta$. Then $\hat{\alpha}$ is admissible under squared error loss if $r \geq 2$. Several estimators dominating $\hat{\alpha}$ when $r \geq 3$ are presented. Analogous results are presented for the case where $\sigma^2$ or $\theta$ are unknown and some other generalizations are also considered. It is noted that some of these results for $r \geq 3$ appear in earlier papers of Baranchik and of Takada. $\{V_i\}$ are ancillary statistics in the above setting. Hence admissibility of $\hat{\alpha}$ depends on the distribution of the ancillary statistics, since if $\{V_i\}$ is fixed instead of random, then $\hat{\alpha}$ is admissible. This fact contradicts a widely held notion about ancillary statistics; some interpretations and consequences of this paradox are briefly discussed.

Citation

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Lawrence D. Brown. "An Ancillarity Paradox Which Appears in Multiple Linear Regression." Ann. Statist. 18 (2) 471 - 493, June, 1990. https://doi.org/10.1214/aos/1176347602

Information

Published: June, 1990
First available in Project Euclid: 12 April 2007

zbMATH: 0721.62011
MathSciNet: MR1056325
Digital Object Identifier: 10.1214/aos/1176347602

Subjects:
Primary: 62C15
Secondary: 62A99 , 62C20 , 62F10 , 62H12 , 62J05

Keywords: Admissibility , Ancillary statistics , multiple linear regression

Rights: Copyright © 1990 Institute of Mathematical Statistics

Vol.18 • No. 2 • June, 1990
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