Count data stochastic frontier models, with an application to the patents–R&D relationship

Count data stochastic frontier models, with an application to the patents–R&D relationship

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Article ID: iaor20132891
Volume: 39
Issue: 3
Start Page Number: 271
End Page Number: 284
Publication Date: Jun 2013
Journal: Journal of Productivity Analysis
Authors: ,
Keywords: production, simulation
Abstract:

This article introduces a new count data stochastic frontier model that researchers can use in order to study efficiency in production when the output variable is a count (so that its conditional distribution is discrete). We discuss parametric and nonparametric estimation of the model, and a Monte Carlo study is presented in order to evaluate the merits and applicability of the new model in small samples. Finally, we use the methods discussed in this article to estimate a production function for the number of patents awarded to a firm given expenditure on R&D.

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