非参数生产模型中的假设检验

Testing Hypotheses in Nonparametric Models of Production

Journal of Business & Economic Statistics · 2015
被引 111
人大 AABS 4

中文导读

基于Kneip等人(2013)的中心极限定理,开发了检验生产集凸性和规模报酬等模型结构假设的方法,并通过蒙特卡洛实验验证了检验的效力。

Abstract

Data envelopment analysis (DEA) and free disposal hull (FDH) estimators are widely used to estimate efficiencies of production units. In applications, practitioners use DEA estimators far more frequently than FDH estimators, and thereby assume, at least implicitly, that production sets are convex. Moreover, use of the constant returns to scale (CRS) version of the DEA estimator requires an assumption of CRS. While several bootstrap methods have been developed for making inference about the eciencies of individual units, to date no methods have existed for making consistent inference about differences in mean efficiency across groups of producers or for testing hypotheses about model structure such as returns to scale or convexity of the production set. This paper builds on central limit theorem results of Kneip et al. (2013) to develop additional theoretical results permitting consistent tests of model structure. Monte Carlo results illustrating the performance of the tests in terms of size and power are also presented. In addition, the variable returns to scale version of the DEA estimator is proved to attain the faster convergence rate of the CRS-DEA estimator under CRS.

非参数生产模型数据包络分析模型结构检验规模收益