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首页> 外文期刊>Journal of Econometrics >Estimating fixed-effect panel stochastic frontier models by model transformation
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Estimating fixed-effect panel stochastic frontier models by model transformation

机译:通过模型变换估算固定效应面板随机边界模型

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Traditional panel stochastic frontier models do not distinguish between unobserved individual heterogeneity and inefficiency. They thus force all time-invariant individual heterogeneity into the estimated inefficiency. Greene (2005) proposes a true fixed-effect stochastic frontier model which, in theory, may be biased by the incidental parameters problem. The problem usually cannot be dealt with by model transformations owing to the nonlinearity of the stochastic frontier model. In this paper, we propose a class of panel stochastic frontier models which create an exception. We show that first-difference and within-transformation can be analytically performed on this model to remove the fixed individual effects, and thus the estimator is immune to the incidental parameters problem. Consistency of the estimator is obtained by either N -> integral or T -> integral, which is an attractive property for empirical researchers.
机译:传统的面板随机前沿模型无法区分未观察到的个体异质性和低效率。因此,它们迫使所有时不变的个体异质性变为估计的低效率。 Greene(2005)提出了一个真正的固定效应随机前沿模型,该模型在理论上可能会受到附带参数问题的影响。由于随机边界模型的非线性,通常无法通过模型转换来解决该问题。在本文中,我们提出了一类产生异常的面板随机边界模型。我们表明,可以对此模型进行分析以执行一阶差分和内变换,以消除固定的个体影响,因此,估计量不受附带参数问题的影响。估计量的一致性是通过N->积分或T->积分获得的,这对经验研究者来说是一个吸引人的特性。

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