I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of parametric distributions with random weights is used to flexibly model an unknown data generating process. The random mixture weights are defined by the exponential tilting projection method to ensure that the joint distribution of the data distribution and the structural parameters are internally consistent with the moment restrictions. In this framework, I make several contributions to Bayesian estimation and inference, as well as model specification. First, I develop simulation-based posterior sampling algorithms based on Markov chain Monte Carlo (MCMC) and sequential Monte Carlo (SMC) methods. Second, I provide a method to compute the marg...
With recent advances in approximate inference, Bayesian methods have proven successful in larger dat...
Bayesian inference in moment condition models is difficult to implement. For these models, a posteri...
Estimators based on moment conditions of the form E[g(X,t)], where t is a finite-dimensional paramet...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
We propose the Bayesian generalized method of moments (GMM), which is particularly useful when likel...
Bayesian Analysis Invited Session — Invited Papers : Abstract - #305960We propose the Bayesian gener...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
With recent advances in approximate inference, Bayesian methods have proven successful in larger dat...
Bayesian inference in moment condition models is difficult to implement. For these models, a posteri...
Estimators based on moment conditions of the form E[g(X,t)], where t is a finite-dimensional paramet...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
I study a semiparametric Bayesian method for over-identified moment condition models. A mixture of p...
We propose the Bayesian generalized method of moments (GMM), which is particularly useful when likel...
Bayesian Analysis Invited Session — Invited Papers : Abstract - #305960We propose the Bayesian gener...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
We consider Bayesian estimation of state space models when the measurement density is not available ...
With recent advances in approximate inference, Bayesian methods have proven successful in larger dat...
Bayesian inference in moment condition models is difficult to implement. For these models, a posteri...
Estimators based on moment conditions of the form E[g(X,t)], where t is a finite-dimensional paramet...