Nonparametric frontier analysis using Stata

Oleg Badunenko, Pavlo Mozharovskyi

Research output: Contribution to journalArticlepeer-review

Abstract

In this article, we describe five new Stata commands that fit and provide statistical inference in nonparametric frontier models. The tenonradial and teradial commands fit data envelopment models where nonradial and radial technical efficiency measures are computed (Färe, 1998, Fundamentals of Production Theory; Färe and Lovell, 1978, Journal of Economic Theory 19: 150–162; Färe, Grosskopf, and Lovell, 1994a, Production Frontiers). Technical efficiency measures are obtained by solving linear programming problems. The teradialbc, nptestind, and nptestrts commands provide tools for making statistical inference regarding radial technical efficiency measures (Simar and Wilson, 1998, Management Science 44: 49–61; 2000, Journal of Applied Statistics 27: 779–802; 2002, European Journal of Operational Research 139: 115–132). We provide a brief overview of the nonparametric efficiency measurement, and we describe the syntax and options of the new commands. Additionally, we provide an example showing the capabilities of the new commands. Finally, we perform a small empirical study of productivity growth.

Original languageEnglish
Article numberst0444
Pages (from-to)550-589
Number of pages40
JournalStata Journal
Volume16
Issue number3
DOIs
Publication statusPublished - 1 Sept 2016
Externally publishedYes

Keywords

  • Bias correction
  • Bootstrap
  • Data envelopment analysis
  • Frontier analysis
  • Linear programming
  • Nonparametric efficiency analysis
  • Nonradial measure
  • Radial measure
  • Smoothed bootstrap
  • Subsampling bootstrap
  • Technical efficiency
  • nptestind
  • nptestrts
  • st0444
  • tenonradial
  • teradial
  • teradialbc

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