采用面板数据的灵活随机生产前沿模型

IF 2.3 3区 经济学 Q2 ECONOMICS Journal of Applied Econometrics Pub Date : 2024-03-01 DOI:10.1002/jae.3033
Taining Wang, Feng Yao, Subal C. Kumbhakar
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引用次数: 0

摘要

我们为面板数据提出了一个灵活的具有固定效应的随机生产前沿模型,在该模型中,半参数前沿是具有双变量交互作用的加法。为避免因分布假设而导致的潜在规范错误和/或 "错误偏斜问题",我们将低效率的条件均值建模为依赖于环境变量的参数向量。我们为表征无效率项条件均值的参数提出了一个基于差分的估计器、一个剖面序列估计器和一个基于核的一步反拟合前沿估计器,以方便推断。我们建立了它们的渐近特性,并证明了基于核的反拟合估计的前沿中的每个成分与利用前沿中其他成分的真实知识估计的成分具有相同的渐近分布(即甲骨文特性)。通过蒙特卡罗研究,我们证明了所提出的估计方法在有限样本中表现良好。利用 2000-2006 年中国企业层面的面板数据,我们运用我们的方法估计了前沿和效率得分,并得出结论:出口在降低企业效率方面发挥了重要作用。
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A flexible stochastic production frontier model with panel data

We propose a flexible stochastic production frontier model with fixed effects for the panel data in which the semiparametric frontier is additive with bivariate interactions. To avoid potential misspecification and/or “wrong skew problem” due to distributional assumptions, we model the conditional mean of the inefficiency to depend on environmental variables and to be known up to a vector of parameters. We propose a difference-based estimator for parameters characterizing the conditional mean of the inefficiency term, a profile series estimator, and a kernel-based one-step backfitting estimator for the frontier to facilitate inference. We establish their asymptotic properties and show that each component in the frontier estimated by the kernel-based backfitting has the same asymptotic distribution as the one estimated with the true knowledge on the other components in the frontier (i.e., the oracle property). Through a Monte Carlo study, we demonstrate that the proposed estimators perform well in finite samples. Utilizing a panel of Chinese firm-level data in 2000–2006, we apply our method to estimate the frontier and efficiency scores and conclude that export plays a significant role in reducing the efficiency of firms.

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来源期刊
CiteScore
3.70
自引率
4.80%
发文量
63
期刊介绍: The Journal of Applied Econometrics is an international journal published bi-monthly, plus 1 additional issue (total 7 issues). It aims to publish articles of high quality dealing with the application of existing as well as new econometric techniques to a wide variety of problems in economics and related subjects, covering topics in measurement, estimation, testing, forecasting, and policy analysis. The emphasis is on the careful and rigorous application of econometric techniques and the appropriate interpretation of the results. The economic content of the articles is stressed. A special feature of the Journal is its emphasis on the replicability of results by other researchers. To achieve this aim, authors are expected to make available a complete set of the data used as well as any specialised computer programs employed through a readily accessible medium, preferably in a machine-readable form. The use of microcomputers in applied research and transferability of data is emphasised. The Journal also features occasional sections of short papers re-evaluating previously published papers. The intention of the Journal of Applied Econometrics is to provide an outlet for innovative, quantitative research in economics which cuts across areas of specialisation, involves transferable techniques, and is easily replicable by other researchers. Contributions that introduce statistical methods that are applicable to a variety of economic problems are actively encouraged. The Journal also aims to publish review and survey articles that make recent developments in the field of theoretical and applied econometrics more readily accessible to applied economists in general.
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