Abstract: This paper develops the important distinction between tilted and simple importance sampling as methods for simulating likelihood functions for use in simulated maximum likelihood. It is shown that tilted importance sampling removes a lower bound to simulation error for given importance sample size that is inherent in simulated maximum likelihood using simple importance sampling, the main method for simulating likelihood functions in the statistics literature. In addition, a new importance sampling technique, generalized Laplace importance sampling, easily combined with tilted importance sampling, is introduced. A number of applications and Monte Carlo experiments demonstrate the power and applicability of the methods. As an exampl...
When a part of data is unobserved the marginal likelihood of parameters given the observed data ofte...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
textabstractImportant choices for efficient and accurate evaluation of marginal likelihoods by means...
Abstract: This paper develops the important distinction between tilted and simple importance sampli...
This paper develops the important distinction between tilted and simple importance sampling as metho...
Abstract: This paper develops the important distinction between tilted and simple importance sampli...
There exists an overall negative assessment of the performance of the simulated maximum likelihood a...
Authors own final version. The original publication is available at www.springer.comThere exists an ...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
This paper discusses the increasing importance of probability simulation methods in the context of M...
This paper discusses the increasing importance of probability simulation methods in the context of M...
Method of Simulated Moments (MSM) estimators introduced by McFadden (1989) and Pakes and Pol-lard (1...
In the present work we study the important sampling method. This method serves as a variance reducti...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
Simulated maximum likelihood estimates an analytically intractable likelihood func-tion with an empi...
When a part of data is unobserved the marginal likelihood of parameters given the observed data ofte...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
textabstractImportant choices for efficient and accurate evaluation of marginal likelihoods by means...
Abstract: This paper develops the important distinction between tilted and simple importance sampli...
This paper develops the important distinction between tilted and simple importance sampling as metho...
Abstract: This paper develops the important distinction between tilted and simple importance sampli...
There exists an overall negative assessment of the performance of the simulated maximum likelihood a...
Authors own final version. The original publication is available at www.springer.comThere exists an ...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
This paper discusses the increasing importance of probability simulation methods in the context of M...
This paper discusses the increasing importance of probability simulation methods in the context of M...
Method of Simulated Moments (MSM) estimators introduced by McFadden (1989) and Pakes and Pol-lard (1...
In the present work we study the important sampling method. This method serves as a variance reducti...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
Simulated maximum likelihood estimates an analytically intractable likelihood func-tion with an empi...
When a part of data is unobserved the marginal likelihood of parameters given the observed data ofte...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
textabstractImportant choices for efficient and accurate evaluation of marginal likelihoods by means...