Maximum likelihood estimation of seemingly unrelated stochastic frontier regressions

Maximum likelihood estimation of seemingly unrelated stochastic frontier regressions

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Article ID: iaor20134231
Volume: 40
Issue: 1
Start Page Number: 1
End Page Number: 14
Publication Date: Aug 2013
Journal: Journal of Productivity Analysis
Authors: ,
Keywords: simulation: applications
Abstract:

In this paper, we propose the copula‐based maximum likelihood (ML) approach to estimate the multiple stochastic frontier (SF) models with correlated composite errors. The motivation behind the extension to system of SF regressions is analogous to the classical generalization to system of seemingly unrelated regressions (Zellner in J Am Statist Assoc 57:348–368, 1962). A demonstration of the copula approach is provided via the analysis of a system of two SF regressions. The consequences of ignoring the correlation between the composite errors are examined by a Monte Carlo experiment. Our findings suggest that the stronger the correlation between the two SF regressions, the more estimation efficiency is lost in separate estimations. Estimation without considering the correlated composite errors may cause significantly efficiency loss in terms of mean squared errors in estimation of the SF technical efficiency. Finally, we also conduct an empirical study based on Taiwan hotel industry data, focusing on the SF regressions for the accommodation and restaurant divisions. Our results, which are consistent with the findings in simulation, show that joint estimation is significantly different from separate estimation without considering the correlated composite errors in the two divisions.

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