We derive some approximations for the asymptotic variance of the Maximum Likelihood estimator for the parameter of the Inverse Hypergeometric random variable. For most statistical models, the asymptotic variance is usually derived after some algebraic manipulations. In this paper, we show that this lengthy calculations can be overcome by simple and accurate linear approximations. The interest for this result arises from a statistical model for preferences that has been recently proposed for evaluation studies, preferences analyses and marketing researches
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
A likelihood approach for fitting asymmetric stochastic volatility models is proposed. It is first s...
International audienceInference for the parametric distribution of a response given covariates is co...
We derive some approximations for the asymptotic variance of the Maximum Likelihood estimator for th...
This paper derives explicit expressions for the asymptotic variances of the maximum likelihood and c...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
We describe Monte Carlo approximation to the maximum likelihood estimator in models with intractable...
In this article, we derive maximum likelihood equations and find Fisher information matrix to constr...
Abstract: A statistical model for ranks is presented, and some results on its parameter are discusse...
As an alternative to the classical assumption o f homogeneous variance model, a normal model whose g...
AbstractThe computation of statistical properties in nonlinear parameter estimation is generally car...
In certain cases statistical methods based on standard maximum likelihood asymptotics become valid a...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
The dissertation is composed of four research papers. In all the papers asymptotic methods and techn...
AbstractWe consider an estimation problem with observations from a Gaussian process. The problem ari...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
A likelihood approach for fitting asymmetric stochastic volatility models is proposed. It is first s...
International audienceInference for the parametric distribution of a response given covariates is co...
We derive some approximations for the asymptotic variance of the Maximum Likelihood estimator for th...
This paper derives explicit expressions for the asymptotic variances of the maximum likelihood and c...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
We describe Monte Carlo approximation to the maximum likelihood estimator in models with intractable...
In this article, we derive maximum likelihood equations and find Fisher information matrix to constr...
Abstract: A statistical model for ranks is presented, and some results on its parameter are discusse...
As an alternative to the classical assumption o f homogeneous variance model, a normal model whose g...
AbstractThe computation of statistical properties in nonlinear parameter estimation is generally car...
In certain cases statistical methods based on standard maximum likelihood asymptotics become valid a...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
The dissertation is composed of four research papers. In all the papers asymptotic methods and techn...
AbstractWe consider an estimation problem with observations from a Gaussian process. The problem ari...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
A likelihood approach for fitting asymmetric stochastic volatility models is proposed. It is first s...
International audienceInference for the parametric distribution of a response given covariates is co...