This paper considers a linear panel data model with time varying heterogeneity. Bayesian inference techniques organized around Markov chain Monte Carlo (MCMC) are applied to implement new estimators that combine smoothness priors on unobserved heterogeneity and priors on the factor structure of unobserved effects. The latter have been addressed in a non-Bayesian framework by Bai (2009) and Kneip et al. (2012), among others. Monte Carlo experiments are used to examine the finite-sample performance of our estimators. An empirical study of efficiency trends in the largest banks operating in the U.S. from 1990 to 2009 illustrates our new estimators. The study concludes that scale economies in intermediation services have been largely exploited ...
Abstract Our paper introduces a new estimation method for arbitrary temporal heterogeneity in panel ...
This paper proposes a new regression model for the analysis of spatial panel data in the case of spa...
Efficiency estimation in stochastic frontier models typically assumes that the underlying production...
This paper considers a linear panel data model with time varying heterogeneity. Bayesian inference t...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This thesis explores a Bayesian approach for four types of panel data models with interactive fixed ...
This paper considers a panel data stochastic frontier model that disentangles unobserved firm effect...
The paper analyzes a number of competing approaches to modeling efficiency in panel studies. The spe...
This paper presents a new stochastic frontier (SF) model for panel data. The new model moves the SF ...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
This paper proposes a panel stochastic frontier model with unobserved common shocks to control cross...
This paper extends the fixed effect panel stochastic frontier models to allow group heterogeneity in...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
This paper considers the estimation and inference procedures for the case of a logistic panel regres...
This paper proposes a panel data based stochastic frontier model which accommodates time-invariant u...
Abstract Our paper introduces a new estimation method for arbitrary temporal heterogeneity in panel ...
This paper proposes a new regression model for the analysis of spatial panel data in the case of spa...
Efficiency estimation in stochastic frontier models typically assumes that the underlying production...
This paper considers a linear panel data model with time varying heterogeneity. Bayesian inference t...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This thesis explores a Bayesian approach for four types of panel data models with interactive fixed ...
This paper considers a panel data stochastic frontier model that disentangles unobserved firm effect...
The paper analyzes a number of competing approaches to modeling efficiency in panel studies. The spe...
This paper presents a new stochastic frontier (SF) model for panel data. The new model moves the SF ...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
This paper proposes a panel stochastic frontier model with unobserved common shocks to control cross...
This paper extends the fixed effect panel stochastic frontier models to allow group heterogeneity in...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
This paper considers the estimation and inference procedures for the case of a logistic panel regres...
This paper proposes a panel data based stochastic frontier model which accommodates time-invariant u...
Abstract Our paper introduces a new estimation method for arbitrary temporal heterogeneity in panel ...
This paper proposes a new regression model for the analysis of spatial panel data in the case of spa...
Efficiency estimation in stochastic frontier models typically assumes that the underlying production...