Sensitivity analysis of stochastic frontier analysis models

IF 0.8 Q3 STATISTICS & PROBABILITY Monte Carlo Methods and Applications Pub Date : 2021-02-02 DOI:10.1515/mcma-2021-2083
Kekoura Sakouvogui, Saleem Shaik, C. Doetkott, R. Magel
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引用次数: 2

Abstract

Abstract The efficiency measures of the Stochastic Frontier Analysis (SFA) models are dependent on distributional assumptions of the one-sided error or inefficiency term. Given the intent of earlier researchers in the evaluation of a single inefficiency distribution using Monte Carlo (MC) simulation, much attention has not been paid to the comparative analysis of SFA models. Our paper aims to evaluate the effects of the assumption of the inefficiency distribution and thus compares different SFA model assumptions by conducting a MC simulation. In this paper, we derive the population statistical parameters of truncated normal, half-normal, and exponential inefficiency distributions of SFA models with the objective of having comparable sample mean and sample standard deviation during MC simulation. Thus, MC simulation is conducted to evaluate the statistical properties and robustness of the inefficiency distributions of SFA models and across three different misspecification scenarios, sample sizes, production functions, and input distributions. MC simulation results show that the misspecified truncated normal SFA model provides the smallest mean absolute deviation and mean square error when the true data generating process is a half-normal inefficiency distribution.
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随机前沿分析模型的敏感性分析
摘要随机前沿分析(SFA)模型的效率测度取决于单边误差或无效项的分布假设。鉴于早期研究人员使用蒙特卡罗(MC)模拟评估单一低效分布的意图,SFA模型的比较分析没有得到太多关注。我们的论文旨在评估低效率分布假设的影响,从而通过进行MC模拟来比较不同的SFA模型假设。在本文中,我们推导了SFA模型的截断正态、半正态和指数低效率分布的总体统计参数,目的是在MC模拟过程中具有可比的样本均值和样本标准差。因此,进行MC模拟以评估SFA模型的低效率分布的统计特性和稳健性,并跨越三种不同的错误指定场景、样本量、生产函数和输入分布。MC仿真结果表明,当真实数据生成过程为半正态低效分布时,指定错误的截断正态SFA模型提供了最小的平均绝对偏差和均方误差。
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来源期刊
Monte Carlo Methods and Applications
Monte Carlo Methods and Applications STATISTICS & PROBABILITY-
CiteScore
1.20
自引率
22.20%
发文量
31
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