Skip to main content
Log in

Chapter 8 Estimating production frontier shifts: An application of DEA to technology assessment

  • Part III Frontier Shifts And Efficiency Evaluations
  • Published:
Annals of Operations Research Aims and scope Submit manuscript

Abstract

Evaluating the separate impacts of factors which affect the productive efficiency of organizations is difficult. This is because the impact of a factor is often contingent on other organizational, managerial or environmental characteristics. Standard econometric methods are limited in their ability to discriminate between efficient and inefficient units, and often impose considerable structure in parametrically specified functional forms. We show how a nonparametric data envelopment approach can be employed to focus on the best that can be achieved, with and without the key characteristic of interest. We illustrate the approach with real data from the service sector requiring the evaluation of the impact of a new information technology. The analytical technique estimates the annual savings in materials cost for an average store using the information technology to be over $4,000 (2.04% of materials cost), well in excess of the amortized annual cost for its installation. Establishing the separation in the production frontier in different regions, we show that the information technology had a substantially larger impact for the bigger stores. The savings were about 80% greater in the larger volume stores than in the smaller volume operations, an important consideration in setting the priorities for installation. The illustration underscores the flexibility of DEA in detecting different impacts of a new technology in different environments.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • Aigner, D.J., C.A.K. Lovell and P.J. Schmidt, Formulation and estimation of stochastic frontier production function models, Journal of Econometrics, July 1977, 21–37.

  • Banker, R.D., Econometric estimation and Data Envelopment Analysis, Research in governmental and nonprofit accounting, 1989, 231–244.

  • Banker, R.D., Stochastic Data Envelopment Analysis, Working Paper Series, Carnegie-Mellon University, 1989.

  • Banker, R.D., Maximum likelihood, consistency and Data Envelopment Analysis: A statistical foundation, Management Science 39, 1993, 1265–1273.

    Google Scholar 

  • Banker, R.D., A. Charnes and W.W. Cooper, models for the estimation of technical and scale inefficiencies in Data Envelopment Analysis, Management Science, September 1984, 1078–1092.

  • Banker, R.D., R.F. Conrad and R.P. Strauss, A comparative application of DEA and translog methods: An illustrative study of hospital production, Management Science, January 1986, 30–44.

  • Banker, R.D. and S.M. Datar, Accounting for labor productivity in manufacturing: An application, inAccounting and Management: Field Study Perspectives, W. Burns and R. Kaplan, eds., Harvard Business School Press, Boston, 1987.

    Google Scholar 

  • Banker, R.D., R.J. Kaufman and R.C. Morey, Measuring gains in operational efficiency from information technology: A study of the Positran deployment at Hardee's Inc., Journal of Management Information Systems 7, 1990, 29–54.

    Google Scholar 

  • Banker, R.D. and A. Maindiratta, Nonparametric analysis of technical and allocative efficiencies in production, Econometrica, November 1988, 1315–1332.

  • Banker, R.D. and A. Maindiratta, Maximum likelihood estimation of monoton increasing and concave production frontiers, Journal of Productivity Analysis, December 1992, 401–416.

  • Banker, R.D. and R.C. Morey, Efficiency analysis for exogenously fixed inputs and outputs, Operations Research, July/August 1986a, 1613–1627.

  • Banker, R.D. and C.F. Kemerer, Scale economies in new software development, IEEE Transactions on Software Engineering, October 1989, 1197–1205.

  • Banker, R.D. and R.C. Morey, Data Envelopment Analysis with categorical inputs and outputs, Management Science, December 1986b, 1613–1627.

  • Banker, R.D. and R.C. Morey, Integrated system design for service sector outlets vis allocative efficiency analysis, Journal of Operation Management 11, 1993, 81–89.

    Google Scholar 

  • Barnett, W.A. and Y.W. Lee, The global properties of the minflex Laurent, generalized Leontief and translog flexible functional forms, Econometrica, 1985, 1421–1437.

  • Bowlin, W.F., An intertemporal assessment of the efficiency of U.S. Air Force accounting and finance offices, Research in Governmental and Non-Profit Accounting 5, 1989.

  • Caves, D.W. and L.R. Christensen, The relative efficiency of public and private firms in a competitive environment: The case of Canadian railroads, Journal of Political Economy, October 1980, 958–976.

  • Charnes, A. and W.W. Cooper, Management science relations for evaluation of management accountability, Journal of Enterprise Management 2, 1980, 143.

    Google Scholar 

  • Charnes, A., W.W. Cooper and E. Rhodes, Measuring the efficiency of decision making units, European Journal of Operational Research 2, 1978, 429–444.

    Google Scholar 

  • Charnes, A., W.W. Cooper and E. Rhodes, Project evaluation and managerial efficiency: An application of Data Envelopment Analysis to program following through, Management Science, 1981, 668–697.

  • Farrell, M.J., The measurement of productivity efficiency, J.D. Royal Statistical Society 120, Series A, part III, 1957.

  • Hildenbrand, W., Short-run production functions based on microdata, Econometrica 49, 1981, 1095–1125.

    Google Scholar 

  • Morey, R.C., D.J. Fine, S.W. Loree, D.L. Retzlaff-Roberts and S. Tsubitami, The tradeoff between hospital costs and quality of care, Medical Care 30, 1992.

  • Retzlaff-Roberts, D. and R.C. Morey, A goal programming methodology stochastic allocative Data Envelopment Analysis, European Journal of Operational Research, December 1993, 379–397.

  • Sinha, K.K., Moving frontier analysis: An application of Data Envelopment Analysis for competitive analysis of a high-technology manufacturing plant, Annals of Operations Research, Chapter 9, this volume.

Download references

Author information

Authors and Affiliations

Authors

Rights and permissions

Reprints and permissions

About this article

Cite this article

Banker, R.D., Morey, R.C. Chapter 8 Estimating production frontier shifts: An application of DEA to technology assessment. Ann Oper Res 66, 179–196 (1996). https://doi.org/10.1007/BF02187590

Download citation

  • Issue Date:

  • DOI: https://doi.org/10.1007/BF02187590

Keywords

Navigation