Shadow Prices and Marginal Abatement Costs: Convex Quantile Regression Approach
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A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä
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2021-03-01
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en
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10
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European Journal of Operational Research, Volume 289, issue 2, pp. 666-675
Abstract
Marginal abatement cost (MAC) is a critically important concept for efficient environmental policy and management. In this paper we argue that most empirical studies using frontier estimation methods such as data envelopment analysis (DEA) over-estimate MACs. The first methodological contribution of this paper is to clarify the conceptual distinction between the shadow price and MAC in order to analyze three sources of upward bias due to the limited set of abatement options, inefficiency, and noisy data. Our second methodological contribution is to develop a novel MAC estimation approach based on convex quantile regression. Compared to the traditional methods, convex quantile regression is more robust to the choice of the direction vector, random noise, and heteroscedasticity. Empirical application to the U.S. electric power plants demonstrates that the upward bias of DEA may be a serious problem in real-world applications.Description
Keywords
Data envelopment analysis, Environmental performance, Nonparametric regression, Production theory, Undesirable outputs
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Kuosmanen, T & Zhou, X 2021, ' Shadow Prices and Marginal Abatement Costs : Convex Quantile Regression Approach ', European Journal of Operational Research, vol. 289, no. 2, pp. 666-675 . https://doi.org/10.1016/j.ejor.2020.07.036