真实固定效应随机前沿模型的高效估算

IF 2.3 4区 经济学 Q3 BUSINESS Journal of Productivity Analysis Pub Date : 2024-05-28 DOI:10.1007/s11123-024-00725-3
Ruggero Bellio, Luca Grassetti
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引用次数: 0

摘要

固定效应模型已成为多种面板数据环境下的首选方法,包括随机前沿分析模型。随机前沿面板数据模型的一个显著实例是真实固定效应模型,该模型可以将单位异质性与效率评估区分开来。虽然这种模型在理论上很有吸引力,但其估算却受到附带参数的影响。本说明提出了一种简单而通用的估算方法,即将特定单位的截距从似然函数中整合出来。我们将复合群族理论应用于所关注的模型,并证明所得到的综合似然是一种边际似然,具有理想的推理特性。我们提供了这一结果的全部推导过程,以及与现有文献的一些联系和计算细节。该方法针对正态-半正态模型、异方差指数模型和正态-伽马模型等三个著名模型进行了说明。模拟实验的结果突出了该方法的特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Efficient estimation of true fixed-effects stochastic frontier models

Fixed-effects modeling has become the method of choice in several panel data settings, including models for stochastic frontier analysis. A notable instance of stochastic frontier panel data models is the true fixed-effects model, which allows disentangling unit heterogeneity from efficiency evaluations. While such a model is theoretically appealing, its estimation is hampered by incidental parameters. This note proposes a simple and rather general estimation approach where the unit-specific intercepts are integrated out of the likelihood function. We apply the theory of composite group families to the model of interest and demonstrate that the resulting integrated likelihood is a marginal likelihood with desirable inferential properties. The derivation of the result is provided in full, along with some connections with the existing literature and computational details. The method is illustrated for three notable models, given by the normal-half normal model, the heteroscedastic exponential model, and the normal-gamma model. The results of simulation experiments highlight the properties of the methodology.

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来源期刊
CiteScore
3.10
自引率
6.20%
发文量
30
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
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