Article ID: | iaor20132892 |
Volume: | 39 |
Issue: | 3 |
Start Page Number: | 285 |
End Page Number: | 302 |
Publication Date: | Jun 2013 |
Journal: | Journal of Productivity Analysis |
Authors: | F Eduardo |
Keywords: | probability, simulation |
This article studies the estimation of production frontiers and efficiency scores when the commodity of interest is an economic bad with a discrete distribution. Existing parametric econometric techniques (stochastic frontier methods) assume that output is a continuous random variable but, if output is discretely distributed, then one faces a scenario of model misspecification. Therefore a new class of econometric models has been developed to overcome this problem. The Delaporte subclass of models is studied in detail, and tests of hypotheses are proposed to discriminate among parametric models. In particular, Pearson’s chi‐squared test is adapted to construct a new kernel‐based consistent Pearson test. A Monte Carlo experiment evaluates the merits of the new model and methods, and these are used to estimate the frontier and efficiency scores of the production of infant deaths in England. Extensions to the model are discussed.