Stochastic frontier models with dependent errors based on normal and exponential margins

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Abstract

Following the recent work of Gómez-Déniz and Pérez-Rodríguez (2014), this paper extends the results obtained there to the normal-exponential distribution with dependence. Accordingly, the main aim of the present paper is to enhance stochastic production frontier and stochastic cost frontier modelling by proposing a bivariate distribution for dependent errors which allows us to nest the classical models. Closed-form expressions for the error term and technical efficiency are provided. An illustration using real data from the econometric literature is provided to show the applicability of the model proposed.

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CITATION STYLE

APA

Gómez-Déniz, E., & Pérez-Rodríguez, J. V. (2017). Stochastic frontier models with dependent errors based on normal and exponential margins. Revista de Metodos Cuantitativos Para La Economia y La Empresa, 23(1), 3–23. https://doi.org/10.46661/revmetodoscuanteconempresa.2684

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