LEVERAGE ADJUSTMENTS FOR DISPERSION MODELLING IN GENERALIZED NONLINEAR MODELS
Author(s)
Smyth, GK; Verbyla, AP;
Details
Publication Year 2009-12,Volume 51,Issue #4,Page 433-448
Journal Title
AUSTRALIAN & NEW ZEALAND JOURNAL OF STATISTICS
Publication Type
Journal Article
Abstract
P>For normal linear models, it is generally accepted that residual maximum likelihood estimation is appropriate when covariance components require estimation. This paper considers generalized linear models in which both the mean and the dispersion are allowed to depend on unknown parameters and on covariates. For these models there is no closed form equivalent to residual maximum likelihood except in very special cases. Using a modified profile likelihood for the dispersion parameters, an adjusted score vector and adjusted information matrix are found under an asymptotic development that holds as the leverages in the mean model become small. Subsequently, the expectation of the fitted deviances is obtained directly to show that the adjusted score vector is unbiased at least to O(1/n). Exact results are obtained in the single-sample case. The results reduce to residual maximum likelihood estimation in the normal linear case.
Publisher
WILEY-BLACKWELL PUBLISHING, INC
Keywords
VARIANCE FUNCTION ESTIMATION; RESIDUAL MAXIMUM-LIKELIHOOD; LINEAR-MODELS; QUASI-LIKELIHOOD; REGRESSION; INFERENCE; PARAMETERS; SERIES
Terms of Use/Rights Notice
Refer to copyright notice on published article.


Creation Date: 2009-12-01 12:00:00
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