4.7 Article

Capital-labour-energy substitution in a nested CES framework: A replication and update of Kemfert (1998)

Journal

ENERGY ECONOMICS
Volume 82, Issue -, Pages 16-25

Publisher

ELSEVIER
DOI: 10.1016/j.eneco.2017.12.019

Keywords

CES; Replication study; Elasticity of substitution; Energy; Climate policy

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The ease with which firms can substitute away from energy to other inputs is an important determining factor in the costs of climate change mitigation policies. Climate policy simulation models usually represent this substitutability by using the Constant Elasticity of Substitution (CES) function with parameter values often taken from econometric studies. Hence, the accuracy of the estimated substitution parameters has a strong influence on the validity of the climate policy simulation. In this article, we attempt to replicate the results presented in a widely cited article in this field: Kemfert (1998) ('Estimated substitution elasticities of a nested CES production function approach for Germany', Energy Economics, 20, 249-264). We first use the data and software reported in that article and compare our results with those reported in the original study. We then test the same data and a new, more recent, data set on German industrial data with an improved econometric approach. Despite applying various approaches and modifications, we are not able to replicate the results in Kemfert (1998). We furthermore conclude that the data sets that are typically used to estimate nested CES functions often have too few observations and too little independent variation of the explanatory variables to obtain reliable estimates when using a direct non-linear approach. (C) 2018 Elsevier B.V. All rights reserved.

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