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Semiparametric Estimation of Stochastic Production Frontier Models
Authors:Yanqin Fan  Qi Li  Alfons Weersink
Institution:1. Department of Economics , University of Windsor , Windsor , Ontario , N9B 3P4 , Canada;2. Department of Economics , University of Guelph , Guelph , Ontario , N1G 2W1 , Canada;3. Department of Agricultural Economics and Business , University of Guelph , Guelph , Ontario , N1G 2W1 , Canada
Abstract:This article extends the linear stochastic frontier model proposed by Aigner, Lovell, and Schmidt to a semiparametric frontier model in which the functional form of the production frontier is unspecified and the distributions of the composite error terms are of known form. Pseudolikelihood estimators of the parameters characterizing the two error terms of the model are constructed based on kernel estimation of the conditional mean function. The Monte Carlo results show that the proposed estimators perform well in finite samples. An empirical application is presented. Extensions to a partially linear frontier function and to more flexible one-sided error distributions than the half-normal are discussed
Keywords:Kernel estimation  Partially linear model  Production efficiency  Pseudo maximum likelihood estimation
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