The paper is concerned with several kinds of stochastic frontier models whose likelihood function is not available in closed form. First, with output-oriented stochastic frontier models whose one-sided errors have a distribution other than the standard ones (exponential or half-normal). The gamma and beta distributions are leading examples. Second, with input-oriented stochastic frontier models which are common in theoretical discussions but not in econometric applications. Third, with two-tiered stochastic frontier models when the one-sided error components follow gamma distributions. Fourth, with latent class models with gamma distributed one-sided error terms. Fifth, with models whose two-sided error component is distributed as stable Pa...
The stochastic frontier model was first proposed in the context of production function estimation to...
This paper addresses some of the recent developments in efficiency measurement using stochastic fron...
<p>Note: ***, ** and * indicate significance at 1, 5 and 10% level, respectively</p><p>Maximum Likel...
The paper is concerned with several kinds of stochastic frontier models whose likelihood function is...
The normal-gamma stochastic frontier model was proposed in Greene (1990) and Beckers and Hammond (19...
A stochastic frontier model is proposed in which the disturbances are a composite of additive gamma ...
The stochastic frontier analysis (Aigner et al. [1] and Meeusen and van den Broeck [8]) has been wid...
When analysing the efficiency of decision-making units, the robustness of efficiency scores to chang...
The normal-gamma stochastic frontier model was proposed in Greene (1990) and Beckers and Hammond (19...
This paper proposes a new approach to handle nonparametric stochastic frontier (SF) models. It is ba...
The presence of outliers in the data has implications for stochastic frontier analysis, and indeed a...
Stochastic frontier analysis (SFA) is extensively utilized to study production functions and to esti...
This chapter is a survey of developments in stochastic frontier modelling. The literature on stochas...
This paper aims at introducing a new class of stochastic frontier models that can take account for ...
Stochastic frontier models all need an assumption on the distributional form of the (in)efficiency c...
The stochastic frontier model was first proposed in the context of production function estimation to...
This paper addresses some of the recent developments in efficiency measurement using stochastic fron...
<p>Note: ***, ** and * indicate significance at 1, 5 and 10% level, respectively</p><p>Maximum Likel...
The paper is concerned with several kinds of stochastic frontier models whose likelihood function is...
The normal-gamma stochastic frontier model was proposed in Greene (1990) and Beckers and Hammond (19...
A stochastic frontier model is proposed in which the disturbances are a composite of additive gamma ...
The stochastic frontier analysis (Aigner et al. [1] and Meeusen and van den Broeck [8]) has been wid...
When analysing the efficiency of decision-making units, the robustness of efficiency scores to chang...
The normal-gamma stochastic frontier model was proposed in Greene (1990) and Beckers and Hammond (19...
This paper proposes a new approach to handle nonparametric stochastic frontier (SF) models. It is ba...
The presence of outliers in the data has implications for stochastic frontier analysis, and indeed a...
Stochastic frontier analysis (SFA) is extensively utilized to study production functions and to esti...
This chapter is a survey of developments in stochastic frontier modelling. The literature on stochas...
This paper aims at introducing a new class of stochastic frontier models that can take account for ...
Stochastic frontier models all need an assumption on the distributional form of the (in)efficiency c...
The stochastic frontier model was first proposed in the context of production function estimation to...
This paper addresses some of the recent developments in efficiency measurement using stochastic fron...
<p>Note: ***, ** and * indicate significance at 1, 5 and 10% level, respectively</p><p>Maximum Likel...