Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This paper proposes a procedure for choosing appropriate densities for integrating the incidental parameters from the likelihood function in a general context. The densities are based on priors that are updated using information from the data and are robust to possible correlation of the group-specific constant terms with the explanatory variables. Monte Carlo experiments are performed in the specific context of stochastic frontier models to examine and compare the sampling properties of the proposed estimator with those of the random-effects and correlated random-effects estimators. The results suggest that the estimator is unbiased even in short ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
The presence of outliers in the data has implications for stochastic frontier analysis, and indeed a...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
[[abstract]]In this paper we consider a fixed-effects stochastic frontier model. That is, we have pa...
True fixed-effects stochastic frontier models are employed in panel data settings to separate time-i...
When analysing the efficiency of decision-making units, the robustness of efficiency scores to chang...
Stochastic frontier analysis (SFA) is extensively utilized to study production functions and to esti...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
The presence of outliers in the data has implications for stochastic frontier analysis, and indeed a...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
Estimation of nonlinear fixed-effects models is plagued by the incidental parameters problem. This p...
[[abstract]]In this paper we consider a fixed-effects stochastic frontier model. That is, we have pa...
True fixed-effects stochastic frontier models are employed in panel data settings to separate time-i...
When analysing the efficiency of decision-making units, the robustness of efficiency scores to chang...
Stochastic frontier analysis (SFA) is extensively utilized to study production functions and to esti...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
Stochastic frontier models are one of the most frequently used approaches for estimating production ...
The presence of outliers in the data has implications for stochastic frontier analysis, and indeed a...