Analysis of Nonlinear Regression Models: A Cautionary Note

Regression models are routinely used in many applied sciences for describing the relationship between a response variable and an independent variable. Statistical inferences on the regression parameters are often performed using the maximum likelihood estimators (MLE). In the case of nonlinear model...

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Bibliographic Details
Main Authors: Shyamal D. Peddada, Joseph K. Haseman
Format: Article
Language:English
Published: SAGE Publishing 2005-07-01
Series:Dose-Response
Online Access:https://doi.org/10.2203/dose-response.003.03.005
Description
Summary:Regression models are routinely used in many applied sciences for describing the relationship between a response variable and an independent variable. Statistical inferences on the regression parameters are often performed using the maximum likelihood estimators (MLE). In the case of nonlinear models the standard errors of MLE are often obtained by linearizing the nonlinear function around the true parameter and by appealing to large sample theory. In this article we demonstrate, through computer simulations, that the resulting asymptotic Wald confidence intervals cannot be trusted to achieve the desired confidence levels. Sometimes they could underestimate the true nominal level and are thus liberal. Hence one needs to be cautious in using the usual linearized standard errors of MLE and the associated confidence intervals.
ISSN:1559-3258