Economic theory does not always specify the functional relationship between dependent and explanatory variables, or even isolate a particular set of covariates. This means that model uncertainty is pervasive in empirical economics. In this paper, we indicate how Bayesian semiparametric regression methods in combination with stochastic search variable selection can be used to address two model uncertainties simultaneously: (i) the uncertainty with respect to the variables which should be included in the model and (ii) the uncertainty with respect to the functional form of their effects. The presented approach enables the simultaneous identification of robust linear and nonlinear effects. The additional insights gained are illustrated on appl...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
This study proposes the application of the Bayesian st and point and approach to economics and econo...
We propose a Bayesian stochastic search approach to selecting restrictions on multivariate regressio...
Economic theory does not always specify the functional relationship between dependent and explanator...
textabstractRegression analyses of cross-country economic growth data are complicated by two main fo...
This paper develops the theoretical background for the Limited Information Bayesian Model Averaging ...
This dissertation consists of three chapters on semi-parametric Bayesian Econometric methods. Chapte...
A recently proposed Bayesian model selection technique, stochastic model specification search, is ca...
textabstractThe choice of a particular model in quantitative economic analysis reflects the economic...
The development of models that go beyond traditional linear regression has been a topic of great int...
We compare the predictive ability of Bayesian methods which deal simultaneously with model uncertain...
We propose a new model for measuring uncertainty and its effects on the economy, based on a large ve...
Helped by cheaper data computation, companies make more use of sophisticated statistical analysis in...
During the exploratory phase of a typical statistical analysis it is natural to look at the data in...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
This study proposes the application of the Bayesian st and point and approach to economics and econo...
We propose a Bayesian stochastic search approach to selecting restrictions on multivariate regressio...
Economic theory does not always specify the functional relationship between dependent and explanator...
textabstractRegression analyses of cross-country economic growth data are complicated by two main fo...
This paper develops the theoretical background for the Limited Information Bayesian Model Averaging ...
This dissertation consists of three chapters on semi-parametric Bayesian Econometric methods. Chapte...
A recently proposed Bayesian model selection technique, stochastic model specification search, is ca...
textabstractThe choice of a particular model in quantitative economic analysis reflects the economic...
The development of models that go beyond traditional linear regression has been a topic of great int...
We compare the predictive ability of Bayesian methods which deal simultaneously with model uncertain...
We propose a new model for measuring uncertainty and its effects on the economy, based on a large ve...
Helped by cheaper data computation, companies make more use of sophisticated statistical analysis in...
During the exploratory phase of a typical statistical analysis it is natural to look at the data in...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
This study proposes the application of the Bayesian st and point and approach to economics and econo...
We propose a Bayesian stochastic search approach to selecting restrictions on multivariate regressio...