How Effective Was the UK Carbon Tax? - A Machine Learning Approach to Policy Evaluation

J. Abrell, Mirjam Kosch, S. Rausch
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引用次数: 40

Abstract

Carbon taxes are commonly seen as a rational policy response to climate change, but little is known about their performance from an ex-post perspective. This paper analyzes the emissions and cost impacts of the UK CPS, a carbon tax levied on all fossil-fired power plants. To overcome the problem of a missing control group, we propose a novel approach for policy evaluation which leverages economic theory and machine learning techniques for counterfactual prediction. Our results indicate that in the period 2013-2016 the CPS lowered emissions by 6.2 percent at an average cost of € 18 per ton. We find substantial temporal heterogeneity in tax-induced impacts which stems from variation in relative fuel prices. An important implication for climate policy is that a higher carbon tax does not necessarily lead to higher emissions reductions or higher costs.
英国碳税的效果如何?-政策评估的机器学习方法
碳税通常被视为应对气候变化的一项理性政策,但从事后的角度来看,人们对其表现知之甚少。本文分析了英国CPS的排放和成本影响,CPS是对所有化石燃料发电厂征收的碳税。为了克服缺少控制组的问题,我们提出了一种新的政策评估方法,该方法利用经济理论和机器学习技术进行反事实预测。我们的研究结果表明,在2013-2016年期间,CPS以每吨18欧元的平均成本降低了6.2%的排放量。我们发现,由于相对燃料价格的变化,税收引起的影响存在实质性的时间异质性。对气候政策的一个重要启示是,更高的碳税并不一定导致更高的减排或更高的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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