Importance sampling is used in many areas of modern econometrics to approximate unsolvable integrals. Its reliable use requires the sampler to possess a variance, for this guarantees a square root speed of convergence and asymptotic normality of the estimator of the integral. However, this assumption is seldom checked. In this paper we use extreme value theory to empirically assess the appropriateness of this assumption. Our main application is the stochastic volatility model, where importance sampling is commonly used for maximum likelihood estimation of the parameters of the model. © 2008 Elsevier B.V. All rights reserved
We propose a method for finding the alternative distribution in importance sampling. The alternative...
When the estimating function for a vector of parameters is not smooth, it is often rather difficult,...
This thesis consists of four papers, presented in Chapters 2-5, on the topics large deviations and s...
Importance sampling is used in many areas of modern econometrics to approximate unsolvable integrals...
Importance sampling is used in many aspects of modern econometrics to approximate unsolvable integra...
Importance sampling is used in many areas of modern econometrics to approximate unsolvable integrals...
This paper is concerned with applying importance sampling as a variance reduc-tion tool for computin...
Monte Carlo importance sampling for evaluating numerical integration is discussed. We consider a par...
This thesis analyzes an importance sampling method whose effectiveness relies in many cases onthe se...
In this paper, we describe and compare two simulated Maximum Likelihood estimation methods for a bas...
\u3cp\u3eImportance sampling has become an important tool for the computation of extreme quantiles a...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
Abstract This thesis consists of two papers related to large deviation results associated with impor...
In the present work we study the important sampling method. This method serves as a variance reducti...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
We propose a method for finding the alternative distribution in importance sampling. The alternative...
When the estimating function for a vector of parameters is not smooth, it is often rather difficult,...
This thesis consists of four papers, presented in Chapters 2-5, on the topics large deviations and s...
Importance sampling is used in many areas of modern econometrics to approximate unsolvable integrals...
Importance sampling is used in many aspects of modern econometrics to approximate unsolvable integra...
Importance sampling is used in many areas of modern econometrics to approximate unsolvable integrals...
This paper is concerned with applying importance sampling as a variance reduc-tion tool for computin...
Monte Carlo importance sampling for evaluating numerical integration is discussed. We consider a par...
This thesis analyzes an importance sampling method whose effectiveness relies in many cases onthe se...
In this paper, we describe and compare two simulated Maximum Likelihood estimation methods for a bas...
\u3cp\u3eImportance sampling has become an important tool for the computation of extreme quantiles a...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
Abstract This thesis consists of two papers related to large deviation results associated with impor...
In the present work we study the important sampling method. This method serves as a variance reducti...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
We propose a method for finding the alternative distribution in importance sampling. The alternative...
When the estimating function for a vector of parameters is not smooth, it is often rather difficult,...
This thesis consists of four papers, presented in Chapters 2-5, on the topics large deviations and s...