AbstractThis paper deals with maximum likelihood estimation of linear or nonlinear functional relationships assuming that replicated observations have been made on p variables at n points. The joint distribution of the pn errors is assumed to be multivariate normal. Existing results are extended in two ways: first, from known to unknown error covariance matrix; second, from the two variate to the multivariate case.For the linear relationship it is shown that the maximum likelihood point estimates are those obtained by the method of generalized least squares. The present method, however, has the advantage of supplying estimates of the asymptotic covariances of the structural parameter estimates
In this paper, a new measure of dependence is proposed. Our approach is based on transforming univar...
When the errors are normally independently distributed with equal variance, the maximum likelihood e...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
AbstractThis paper deals with maximum likelihood estimation of linear or nonlinear functional relati...
SUMMARY: The problem considered is that of estimating a p-parameter functional relationship η = η(ξ;...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
This thesis deals with a linear functional relationship model in which the unobserved true values sa...
AbstractMany authors have discussed maximum likelihood estimation in the simple linear functional re...
A maximum likelihood solution is obtained for the simple linear structural relation model where the ...
This article deals with multiple linear functional relationships models. Two robust estimations proc...
AbstractThis paper surveys the problem of estimating a linear relationship between variables which a...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
Replicated linear functional relationship model is often used to describe relationships between two ...
In this paper, a new measure of dependence is proposed. Our approach is based on transforming univar...
When the errors are normally independently distributed with equal variance, the maximum likelihood e...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
AbstractThis paper deals with maximum likelihood estimation of linear or nonlinear functional relati...
SUMMARY: The problem considered is that of estimating a p-parameter functional relationship η = η(ξ;...
An estimation procedure based on estimating equations is presented for the parameters in a multivari...
This thesis deals with a linear functional relationship model in which the unobserved true values sa...
AbstractMany authors have discussed maximum likelihood estimation in the simple linear functional re...
A maximum likelihood solution is obtained for the simple linear structural relation model where the ...
This article deals with multiple linear functional relationships models. Two robust estimations proc...
AbstractThis paper surveys the problem of estimating a linear relationship between variables which a...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
Replicated linear functional relationship model is often used to describe relationships between two ...
In this paper, a new measure of dependence is proposed. Our approach is based on transforming univar...
When the errors are normally independently distributed with equal variance, the maximum likelihood e...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...