This paper considers an alternative to iterative procedures used to calculate maximum likelihood estimates of regression coefficients in a general class of discrete data regression models. These models can include both marginal and conditional models and also local regression models. The classical estimation procedure is generally via a Fisher-scoring algorithm and can be computationally intensive for high-dimensional problems. The alternative method proposed here is non-iterative and is likely to be more efficient in high-dimensional problems. The method is demonstrated on two different classes of regression models.
Maximum likelihood Estimation is an important aspect of frequentist approach which was introduced by...
This thesis presents research on modelling, statistical inference and computation for multivariate ...
Abstract _ We study statistical properties of coefficient estimates of the partially linear regressi...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
This paper describes an iterative procedure for obtaining mnaximum likelihood estimates of the param...
In this paper we consider estimation of models popular in efficiency and productivity analysis (such...
This article presents an overview of the logistic regression model for dependent variables having tw...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
We study statistical properties of coefficient estimates of the partially linear regression model wh...
A maximum likelihood (ML) estimation procedure is developed to find the mean of the exponential fami...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
This paper presents and discusses procedures for estimating regression curves when regressors are di...
The problem of estimating the parameters of multivariate linear models in the context of an arbitrar...
We consider the problem of estimating the parameters of a Gaussian or binary distribution in such a ...
Maximum likelihood Estimation is an important aspect of frequentist approach which was introduced by...
This thesis presents research on modelling, statistical inference and computation for multivariate ...
Abstract _ We study statistical properties of coefficient estimates of the partially linear regressi...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
In this paper we provide asymptotic theory of local maximum likelihood techniques for estimating a r...
This paper describes an iterative procedure for obtaining mnaximum likelihood estimates of the param...
In this paper we consider estimation of models popular in efficiency and productivity analysis (such...
This article presents an overview of the logistic regression model for dependent variables having tw...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
We study statistical properties of coefficient estimates of the partially linear regression model wh...
A maximum likelihood (ML) estimation procedure is developed to find the mean of the exponential fami...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
This paper presents and discusses procedures for estimating regression curves when regressors are di...
The problem of estimating the parameters of multivariate linear models in the context of an arbitrar...
We consider the problem of estimating the parameters of a Gaussian or binary distribution in such a ...
Maximum likelihood Estimation is an important aspect of frequentist approach which was introduced by...
This thesis presents research on modelling, statistical inference and computation for multivariate ...
Abstract _ We study statistical properties of coefficient estimates of the partially linear regressi...