Along the ever increasing data size and model complexity, an important challenge frequently encountered in constructing new estimators or in implementing a classical one such as the maximum likelihood estimator, is the computational aspect of the estimation procedure. To carry out estimation, approximate methods such as pseudo-likelihood functions or approximated estimating equations are increasingly used in practice as these methods are typically easier to implement numerically although they can lead to inconsistent and/or biased estimators. In this context, we extend and provide refinements on the known bias correction properties of two simulation based methods, respectively indirect inference and bootstrap, each with two alternatives. Th...
Cahiers du département d'Econométrie, Université de Genève, n° 2008.01/2008Indirect inference (Smith...
We propose a computationally efficient approximation for the double bootstrap bias adjustment factor...
We develop a method for bias correction, which models the error of the target estimator as a functio...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
This paper is interested in small sample properties of the indirect inference procedure which has be...
Considering the increasing size of available data, the need for statistical methods that control the...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
We analyze the properties of various methods for bias-correcting parameter estimates in both station...
The focus of this thesis is twofold. First, it delivers a new look at existing simulation-based meth...
Indirect Inference (I-I) is a popular technique for estimating complex parametric models whose likel...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Many modern estimation methods in econometrics approximate an objective function, through simulation...
Cahiers du département d'Econométrie, Université de Genève, n° 2008.01/2008Indirect inference (Smith...
We propose a computationally efficient approximation for the double bootstrap bias adjustment factor...
We develop a method for bias correction, which models the error of the target estimator as a functio...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
This paper is interested in small sample properties of the indirect inference procedure which has be...
Considering the increasing size of available data, the need for statistical methods that control the...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
We analyze the properties of various methods for bias-correcting parameter estimates in both station...
The focus of this thesis is twofold. First, it delivers a new look at existing simulation-based meth...
Indirect Inference (I-I) is a popular technique for estimating complex parametric models whose likel...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Many modern estimation methods in econometrics approximate an objective function, through simulation...
Cahiers du département d'Econométrie, Université de Genève, n° 2008.01/2008Indirect inference (Smith...
We propose a computationally efficient approximation for the double bootstrap bias adjustment factor...
We develop a method for bias correction, which models the error of the target estimator as a functio...