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Stata package for robust stochastic frontier analysis

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rfrontier

Stata package for robust stochastic frontier analysis

This facilitates estimation of stochastic frontier models with alternative distributional assumptions, including models with in which the noise terms follows a Student's t, Cauchy, or logistic distribution. The package can then be used to generate efficiency predictions, influence functions (for parameter estimates and for efficiency predictions) and related postestimation outputs. The main purposes of this package are to enable easy implementation of some of the stochastic frontier specifications explored in publications I have co-authored, and to ease replication of some of the results reported in these publications.

Installation

In order to install the command, enter the following commands into Stata (the first is unnecessary if you already have the github command installed):

net install github, from("https://haghish.github.io/github/")
github install AlexStead/rfrontier

Getting started

For help with the command's syntax and options, enter (after installation):

help rfrontier
help rfrontier_postestimation

Linked publications

  • Stead AD, Wheat P, and Greene WH. 2023. Robustness in stochastic frontier analysis. In: Macedo P, Moutinho V, and Madaleno M (eds). Advanced Mathematical Methods for Economic Efficiency Analysis. Lecture Notes in Economics and Mathematical Systems. Springer. pp. 197-228. https://doi.org/10.1007/978-3-031-29583-6_12
  • Stead AD, Wheat P, Greene WH. 2023. Robust maximum likelihood estimation of stochastic frontier models. European Journal of Operational Research. 309(1). pp.188-201. https://doi.org/10.1016/j.ejor.2022.12.033
  • Wheat P, Stead AD, Greene WH. 2019. Robust stochastic frontier analysis: a Student’s t-half normal model with application to highway maintenance costs in England. Journal of Productivity Analysis. 51(1). pp. 21-38. https://doi.org/10.1007/s11123-018-0541-y
  • Stead AD, Wheat P, Greene WH. 2018. Estimating efficiency in the presence of extreme outliers: A logistic-half normal stochastic frontier model with application to highway maintenance costs in England. In: Greene WH, Khalaf L, Makdissi P, Sickles RC, Veall MR, and Voia M-C (eds). Productivity and Inequality. Springer Proceedings in Business and Economics. Springer International Publishing. pp. 1-19. https://doi.org/10.1007/978-3-319-68678-3_1