Measuring the Rebound Effect with Micro Data

B. de Borger, I. Mulalic, J. Rouwendal
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引用次数: 51

Abstract

We provide estimates of the rebound effect for car transport in Denmark, using a rich data set with individual household data on car use, fuel efficiency, and car as well as household characteristics. A demand model is estimated in first differences; the availability of households in the sample that replaced their car during the period of observation combined with information on their driving behaviour before and after the car switch allows us to identify the rebound effect. Endogeneity is taken into account by using appropriate instruments. Results include the following. First, we reject the 'conventional' formulation in which only fuel cost per kilometre matters. Second, the selection equation confirms that higher fuel prices induce households to switch car. Third, the results suggest the presence of a rebound effect that is on the lower end of the estimates available in the literature. Specifically, our best estimate of the rebound effect is some 7.5%-10%. Fourth, the fuel price sensitivity of the demand for kilometres appears to be declining with household income, but we do not find a significant impact of income on the rebound effect. Finally, simulation results indicate that the small rebound effect and changes in car characteristics in response to higher fuel prices imply that -- compared to the reference scenario -- higher fuel prices lead to a substantial reduction in both the demand for kilometres and in demand for fuel.
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用微观数据测量回弹效应
我们对丹麦汽车运输的反弹效应进行了估计,使用了丰富的数据集,其中包括汽车使用、燃油效率以及汽车和家庭特征方面的个人家庭数据。需求模型用一阶差分估计;在观察期间,样本中有多少家庭更换了汽车,再加上他们更换汽车前后的驾驶行为信息,使我们能够识别反弹效应。通过使用适当的工具来考虑内生性。结果包括以下内容。首先,我们拒绝只考虑每公里燃料成本的“传统”公式。其次,选择方程证实,较高的燃油价格促使家庭更换汽车。第三,结果表明存在反弹效应,这是在文献中可用的估计的低端。具体来说,我们对反弹效应的最佳估计约为7.5%-10%。第四,燃油价格对公里数需求的敏感性随着家庭收入的增加而下降,但我们没有发现收入对反弹效应的显著影响。最后,模拟结果表明,与参考情景相比,高油价对汽车特性的小反弹效应和变化意味着,高油价导致公里数需求和燃料需求的大幅减少。
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