One-stage estimation of the effects of operational conditions and practices on productive performance: asymptotically normal and efficient, root-n consistent StoNEZD method

被引:0
作者
Andrew L. Johnson
Timo Kuosmanen
机构
[1] Texas A&M University,Department of Industrial and Systems Engineering
[2] Aalto University,School of Economics
来源
Journal of Productivity Analysis | 2011年 / 36卷
关键词
Data envelopment analysis; Two-stage method; Partial linear model; C14; C51; D24;
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中图分类号
学科分类号
摘要
Understanding the effects of operational conditions and practices on productive efficiency can provide valuable economic and managerial insights. The conventional approach is to use a two-stage method where the efficiency estimates are regressed on contextual variables representing the operational conditions. The main problem of the two-stage approach is that it ignores the correlations between inputs and contextual variables. To address this shortcoming, we build on the recently developed regression interpretation of data envelopment analysis (DEA) to develop a new one-stage semi-nonparametric estimator that combines the nonparametric DEA-style frontier with a regression model of the contextual variables. The new method is referred to as stochastic semi-nonparametric envelopment of z variables data (StoNEZD). The StoNEZD estimator for the contextual variables is shown to be statistically consistent under less restrictive assumptions than those required by the two-stage DEA estimator. Further, the StoNEZD estimator is shown to be unbiased, asymptotically efficient, asymptotically normally distributed, and converge at the standard parametric rate of order n−1/2. Therefore, the conventional methods of statistical testing and confidence intervals apply for asymptotic inference. Finite sample performance of the proposed estimators is examined through Monte Carlo simulations.
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页码:219 / 230
页数:11
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共 39 条
  • [1] Afriat SN(1967)The construction of a utility function from expenditure data Int Econ Rev 8 67-77
  • [2] Afriat SN(1972)Efficiency estimation of production functions Int Econ Rev 13 568-598
  • [3] Aigner D(1977)Formulation and estimation of stochastic frontier production function models J Econ 6 21-37
  • [4] Lovell CAK(2008)Evaluating contextual variables affecting productivity using data envelopment analysis Oper Res 56 48-58
  • [5] Schmidt P(2010)Three-stage DEA models for incorporating exogenous inputs Comput Oper Res 37 1087-1090
  • [6] Banker RD(2001)A canonical process for estimation of convex functions: the “invelope” of integrated Brownian motion plus t(4) Ann Stat 29 1620-1652
  • [7] Natarajan R(1998)Another approach to data envelopment analysis in noisy environments: DEA+ J Prod Anal 9 161-176
  • [8] Estelle SM(1959)The ambiguous notion of efficiency Econ J 69 71-86
  • [9] Johnson AL(1976)Consistency in concave regression Ann Stat 4 1038-1050
  • [10] Ruggiero J(1954)Pont estimates of ordinates of concave functions J Am Stat Assoc 49 598-619