Open Access
VOL. 1 | 2008 Analytic perturbations and systematic bias in statistical modeling and inference
Jerzy A. Filar, Irene Hudson, Thomas Mathew, Bimal Sinha

Editor(s) N. Balakrishnan, Edsel A. Peña, Mervyn J. Silvapulle

Inst. Math. Stat. (IMS) Collect., 2008: 17-34 (2008) DOI: 10.1214/193940307000000022

Abstract

In this paper we provide a comprehensive study of statistical inference in linear and allied models which exhibit some analytic perturbations in their design and covariance matrices. We also indicate a few potential applications. In the theory of perturbations of linear operators it has been known for a long time that the so-called “singular perturbations” can have a big impact on solutions of equations involving these operators even when their size is small. It appears that so far the question of whether such undesirable phenomena can also occur in statistical models and their solutions has not been formally studied. The models considered in this article arise in the context of nonlinear models where a single parameter accounts for the nonlinearity.

Information

Published: 1 January 2008
First available in Project Euclid: 1 April 2008

MathSciNet: MR2459251

Digital Object Identifier: 10.1214/193940307000000022

Subjects:
Primary: 15A99
Secondary: 62J99

Keywords: analytic perturbation , design matrix , Eigen values , eigen vectors , factor analysis , nonlinear models , principal components , robustness

Rights: Copyright © 2008, Institute of Mathematical Statistics

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