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Indirect Inference of Stochastic Frontier Models

Hung-pin Lai (Department of Economics, National Chung Cheng University, Chiayi, Taiwan; and Research Center of Humanities and Social Sciences, Academia Sinica, Taipei, Taiwan)

Essays in Honor of Subal Kumbhakar

ISBN: 978-1-83797-874-8, eISBN: 978-1-83797-873-1

Publication date: 5 April 2024

Abstract

The standard method to estimate a stochastic frontier (SF) model is the maximum likelihood (ML) approach with the distribution assumptions of a symmetric two-sided stochastic error v and a one-sided inefficiency random component u. When v or u has a nonstandard distribution, such as v follows a generalized t distribution or u has a χ2 distribution, the likelihood function can be complicated or untractable. This chapter introduces using indirect inference to estimate the SF models, where only least squares estimation is used. There is no need to derive the density or likelihood function, thus it is easier to handle a model with complicated distributions in practice. The author examines the finite sample performance of the proposed estimator and also compare it with the standard ML estimator as well as the maximum simulated likelihood (MSL) estimator using Monte Carlo simulations. The author found that the indirect inference estimator performs quite well in finite samples.

Keywords

Citation

Lai, H.-p. (2024), "Indirect Inference of Stochastic Frontier Models", Parmeter, C.F., Tsionas, M.G. and Wang, H.-J. (Ed.) Essays in Honor of Subal Kumbhakar (Advances in Econometrics, Vol. 46), Emerald Publishing Limited, Leeds, pp. 415-438. https://doi.org/10.1108/S0731-905320240000046014

Publisher

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Emerald Publishing Limited

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