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引用次数: 0
摘要
在空间自回归(SAR)随机前沿(SF)模型中,区别于 SAR 模型的无效率项可以捕捉技术无效率的影响。为了确定横截面 SARSF 模型中是否显著存在低效率,本文提出了一种基于偏度的检验方法。该检验不依赖于扰动的正态性假设,允许无效率遵循未知的单边分布。我们建立了该检验统计量在空间近时相依赖特性下的渐近理论。此外,我们将该检验扩展到面板 SARSF 数据模型,同时考虑了个体和时间固定效应。此外,蒙特卡罗模拟证明了我们的检验对非正常干扰的稳健性,以及在不同的单边无效率分布下的令人满意的表现。最后,我们使用西班牙北部 137 个奶牛场的数据进行了实证应用,以说明根据我们的检验方法,生产中存在技术效率低下的情况。
Skewness-based test diagnosis of technical inefficiency in spatial autoregressive stochastic frontier models
In the Spatial Autoregressive (SAR) Stochastic Frontier (SF) model, the inefficiency term, which distinguishes it from the SAR model, can capture the effects of technical inefficiency. To determine whether inefficiency significantly exists in the cross-sectional SARSF model, this paper proposes a skewness-based test. This test does not rely on the normality assumption for the disturbances and allows inefficiency to follow an unknown one-sided distribution. We establish the asymptotic theory of the test statistic under spatial near-epoch dependent properties. Furthermore, we extend this test to the panel SARSF data model, accounting for both individual and time fixed-effects. Additionally, Monte Carlo simulations demonstrate the robustness of our test against non-normal disturbances and its satisfactory performance with different one-sided distributions for inefficiency. Finally, we provide an empirical application using data from 137 dairy farms in Northern Spain to illustrate the presence of technical inefficiency in production according to our test.
期刊介绍:
The Journal of Productivity Analysis publishes theoretical and applied research that addresses issues involving the measurement, explanation, and improvement of productivity. The broad scope of the journal encompasses productivity-related developments spanning the disciplines of economics, the management sciences, operations research, and business and public administration. Topics covered in the journal include, but are not limited to, productivity theory, organizational design, index number theory, and related foundations of productivity analysis. The journal also publishes research on computational methods that are employed in productivity analysis, including econometric and mathematical programming techniques, and empirical research based on data at all levels of aggregation, ranging from aggregate macroeconomic data to disaggregate microeconomic data. The empirical research illustrates the application of theory and techniques to the measurement of productivity, and develops implications for the design of managerial strategies and public policy to enhance productivity.
Officially cited as: J Prod Anal