AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estimator. We consider the large sample properties of such estimators generated from samples that are not necessarily identically distributed. Very general assumptions that lead to the existence, strong consistency, and asymptotic normality of the estimators are given. A number of results that are useful in verifying the general assumptions are given and an example illustrates their use. General applications to maximum likelihood, iteratively reweighted least squares, and robust estimation are discussed briefly
We review the most common situations where one or some of the regularity conditions which underlie l...
We are concerned with the asymptotic theory of semiparametric estimation equations. We are dealing w...
Abstract This paper analyzes conditions under which various single-equation estimators are asymptoti...
AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estim...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
The asymptotic properties of a solution of the maximum likelihood equation for the case of independe...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
This paper considers the asymptotic behaviour of the ordinary least squares estimator of the coeffic...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
This paper reviews the most common situations where one or more regularity conditions which underlie...
We consider maximum likelihood estimation of the parameters of a probability density which is zero f...
This paper reviews the most common situations where one or more regularity conditions which underlie...
We review the most common situations where one or some of the regularity conditions which ...
We review the most common situations where one or some of the regularity conditions which underlie l...
We are concerned with the asymptotic theory of semiparametric estimation equations. We are dealing w...
Abstract This paper analyzes conditions under which various single-equation estimators are asymptoti...
AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estim...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
The asymptotic properties of a solution of the maximum likelihood equation for the case of independe...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
This paper considers the asymptotic behaviour of the ordinary least squares estimator of the coeffic...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
This paper reviews the most common situations where one or more regularity conditions which underlie...
We consider maximum likelihood estimation of the parameters of a probability density which is zero f...
This paper reviews the most common situations where one or more regularity conditions which underlie...
We review the most common situations where one or some of the regularity conditions which ...
We review the most common situations where one or some of the regularity conditions which underlie l...
We are concerned with the asymptotic theory of semiparametric estimation equations. We are dealing w...
Abstract This paper analyzes conditions under which various single-equation estimators are asymptoti...