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Bayesian inference in threshold stochastic frontier models

机译:门限随机边界模型中的贝叶斯推断

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In this paper, we generalize the stochastic frontier model to allow for heterogeneous technologies and inefficiencies in a structured way that allows for learning and adapting. We propose a general model and various special cases, organized around the idea that there is switching or transition from one technology to the other(s), and construct threshold stochastic frontier models. We suggest Bayesian inferences for the general model proposed here and its special cases using Gibbs sampling with data augmentation. The new techniques are applied, with very satisfactory results, to a panel of world production functions using, as switching or transition variables, human capital, age of capital stock (representing input quality), as well as a time trend to capture structural switching.
机译:在本文中,我们概括了随机前沿模型,以结构化的方式允许异构技术和效率低下,从而允许学习和适应。我们提出一个通用模型和各种特殊情况,围绕从一种技术到另一种技术的转换或过渡的思想进行组织,并构建阈值随机前沿模型。我们建议对此处提出的通用模型及其使用Gibbs采样和数据增强的特殊情况的贝叶斯推断。这些新技术以人力资本,资本存续年限(代表输入质量)以及捕获结构转换的时间趋势作为转换或转移变量,被应用到一组世界生产函数中,效果非常令人满意。

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