Asymptotic normality in multivariate nonlinear regression and multivariate generalized linear regression models under repeated measurements with missing data
For multivariate nonlinear regression and multivariate generalized linear regression models, with repeated measurements and possible missing values, we derive the asymptotic normality of a general estimating equations estimator of the regression matrix. We also provide consistent estimators of the covariance matrix of the response vectors. In our setting both the response variable and the covariates may be multivariate. Furthermore, the regression parameters are allowed to be dependent on a finite number of time units or some other categorical variable. For example, one may test whether or not the parameter vectors are equal across the different time units. Missing values are permitted, though certainly are not necessary, in order for the asymptotic theory to hold. Herein, any missingness is allowed to depend upon the values of the covariates but not on the response variable. No distributional assumptions are made on the data.
Year of publication: |
2000
|
---|---|
Authors: | Garren, Steven T. ; Peddada, Shyamal D. |
Published in: |
Statistics & Probability Letters. - Elsevier, ISSN 0167-7152. - Vol. 48.2000, 3, p. 293-302
|
Publisher: |
Elsevier |
Keywords: | Asymptotics Estimating equations Generalized linear models Missing data |
Saved in:
Saved in favorites
Similar items by person
-
On a Likelihood-Based Goodness-of-Fit Test of the Beta-Binomial Model
Garren, Steven T., (2000)
-
Garren, Steven T., (1998)
-
Garren, Steven T., (2000)
- More ...