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ESTIMATING STATE-CONTINGENT PRODUCTION FUNCTIONS

机译:估算国家偶然的生产功能

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摘要

The paper reviews the empirical problem of estimating state-contingent production functions. The major problem is that states of nature may not be registered and/or that the number of observation per state is low. Monte Carlo simulation is used to generate an artificial, uncertain production environment based on Cobb Douglas production functions with state-contingent parameters. The parameters are subsequently estimated based on different sizes of samples using Generalized Least Squares and Generalized Maximum Entropy and the results are compared. It is concluded that Maximum Entropy may be useful, but that further analysis is needed to evaluate the efficiency of this estimation method compared to traditional methods.
机译:本文审查了估计国家或有生产职能的经验问题。主要问题是自然状态可能无法登记和/或每个状态的观察数量低。 Monte Carlo仿真用于基于Cobb Douglas生产功能的基于Cobb Douglas生产功能来产生人造不确定的生产环境。随后基于使用广义最小二乘和广义最大熵的不同大小来估计参数,并将结果进行了比较。得出结论,最大熵可能是有用的,但是,与传统方法相比,需要进一步分析来评估该估计方法的效率。

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