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Simulated maximum likelihood estimation of spatial stochastic frontier model and its application?

机译:空间随机边界模型的模拟最大似然估计及其应用?

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This paper considers a spatial stochastic frontier model that accounts for possible unknown geographical variation of the outputs. The stochastic frontier model is augmented with a spatial autoregressive structure for the two-sided part of the disturbance, and the time-varying technical inefficiency is not imposed a rigorous function structure. Because of the spatial effect and the asymmetry composed error structure, it is intractable to employ maximum likelihood method directly to estimate the proposed model. Simulated maximum likelihood estimation is used instead. We derive the simulated likelihood function of the model, and present an application of the estimation method on China province-level panel data from 2000 to 2007. The results show that the spatial effect is highly significant, and the ignorance of the spatial effect produces significantly different rankings of technical efficiencies across production units.
机译:本文考虑了一种空间随机边界模型,该模型说明了输出可能存在的未知地理变化。对于扰动的两侧部分,随机前沿模型增加了空间自回归结构,并且时变技术效率低下没有施加严格的功能结构。由于空间效应和不对称构成的误差结构,直接采用最大似然法来估计所提出的模型是很棘手的。而是使用模拟的最大似然估计。我们推导了模型的模拟似然函数,并提出了该估计方法在2000年至2007年中国省级面板数据中的应用。结果表明,空间效应非常显着,对空间效应的无知产生了很大不同生产单位的技术效率排名不同。

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