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首页> 外文期刊>Journal of Econometrics >Estimating variable returns to scale production frontiers with alternative stochastic assumptions
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Estimating variable returns to scale production frontiers with alternative stochastic assumptions

机译:使用随机随机假设估算变量回报,以规模生产前沿

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摘要

Two stochastic production frontier models are formulated within the generalized production function framework popularized by Zellner and Revankar (Rev. Econ Stud. 36 (1969) 241) and Zellner and Ryu (J. Appl. Econometrics 13 (1998) 101). This frameworkis convenient for parsimonious modeling of a production function with returns to scale specified as a function of output. Two alternatives for introducing the stochastic inefficiency term and the stochastic error are considered. In the first the errorsare added to an equation of the form h(log y, theta) = log f(x, beta) where y denotes output, x is a vector of inputs and (theta beta) are parameters. In the second the equation h(log y, theta) = log f(x beta) is solved for log y to yield a solution of the form log y = g[theta, log f(x, beta)] and the errors are added to this equation. The latter alternative is novel, but it is needed to preserve the usual definition of firm efficiency. The two alternative stochastic assumptions are considered in conjunction with two returns to scale functions, making a total of four models that are considered, A Bayesian framework for estimating all four models is described. The techniques are applied to USDA state-level data on agricultural output and four inputs. Posterior distributions for all parameters, for firm efficiencies and for the efficiency rankings of firms are obtained. The sensitivity of the results to the returns to scale specification and to the stochastic specification is examined.
机译:在Zellner和Revankar(Rev. Econ Stud。36(1969)241)和Zellner和Ryu(J. Appl。Econometrics 13(1998)101)推广的广义生产函数框架内,制定了两个随机生产前沿模型。该框架便于对生产函数进行简约建模,并将规模收益指定为输出函数。考虑了两种引入随机低效率项和随机误差的方法。首先,将误差添加到形式为h(log y,theta)= log f(x,beta)的方程式中,其中y表示输出,x是输入的向量,而(theta beta)是参数。在第二步中,求解方程式h(log y,theta)= log f(x beta)以获得log y形式的解决方案log y = g [theta,log f(x,beta)],误差为添加到此等式中。后一种选择是新颖的,但是需要保留企业效率的通常定义。结合两个按比例缩放函数考虑了两个备选随机假设,总共考虑了四个模型。描述了用于估计所有四个模型的贝叶斯框架。该技术应用于美国农业部有关农业产出和四项投入的州级数据。获得所有参数,企业效率和企业效率排名的后验分布。检查了结果对规模收益和随机指标的敏感性。

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