Since statistical models are simplifications of reality, it is important in estimation theory to study the behavior of estimators also under distributions (slightly) different from the proposed model. In testing theory, when dealing with test statistics where nuisance parameters are estimated, knowledge of the behavior of the estimators of the nuisance parameters is needed under alternatives to evaluate the power. In this paper the moderate deviation behavior of the (multivariate) maximum likelihood estimator determined within a proposed model is investigated not only under this model, but also under distributions close to the model. The set-up is quite general, including for instance also discrete distributions
A class of latent variable models which includes the unrestricted factor analysis model is considere...
This paper discusses the problem of statistical inference in multivariate linear regression models w...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
Since statistical models are simplifications of reality, it is important in estimation the-ory to st...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
In this paper, we obtain a moderate deviation result for the maximum likelihood estimator under cert...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
General sucient conditions for the moderate deviations of M{estimators are pre-sented. These results...
AbstractThis paper studies moderate deviation behaviors of the generalized method of moments and gen...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
This paper concerns normal approximations to the distribution of the maximum likelihood estimator in...
A class of latent variable models which includes the unrestricted factor analysis model is considere...
This paper discusses the problem of statistical inference in multivariate linear regression models w...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
Since statistical models are simplifications of reality, it is important in estimation the-ory to st...
Since statistical models are simplifications of reality, it is important in estimation theory to stu...
In this paper, we obtain a moderate deviation result for the maximum likelihood estimator under cert...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
General sucient conditions for the moderate deviations of M{estimators are pre-sented. These results...
AbstractThis paper studies moderate deviation behaviors of the generalized method of moments and gen...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
This paper studies moderate deviation behaviors of the generalized method of moments and generalized...
This paper concerns normal approximations to the distribution of the maximum likelihood estimator in...
A class of latent variable models which includes the unrestricted factor analysis model is considere...
This paper discusses the problem of statistical inference in multivariate linear regression models w...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...