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Small Steps with Big Data: Using Machine Learning in Energy and Environmental Economics
Annual Review of Resource Economics ( IF 5.8 ) Pub Date : 2021-10-05 , DOI: 10.1146/annurev-resource-100920-034117
Matthew C. Harding 1 , Carlos Lamarche 2
Affiliation  

This article reviews recent endeavors to incorporate big data and machine learning techniques into energy and environmental economics research. We find that novel datasets, from high frequency smart meter data to satellite images and social media data, are already used by researchers. At the same time most of the analyses rely on traditional econometric techniques. Nevertheless, we find applications of machine learning models that address the high dimensionality of the data and seek out new and better strategies for estimating heterogenous treatment effects. We provide an introduction to the main themes in machine learning, which are likely to be of use to economists in energy and environmental economics, and illustrate them using a real data example derived from an energy efficiency program evaluation. We provide the data and code in order to stimulate further research in this area.

中文翻译:


大数据的小步骤:在能源和环境经济学中使用机器学习

本文回顾了最近将大数据和机器学习技术纳入能源和环境经济学研究的努力。我们发现研究人员已经使用了新的数据集,从高频智能电表数据到卫星图像和社交媒体数据。同时,大多数分析依赖于传统的计量经济学技术。尽管如此,我们发现机器学习模型的应用可以解决数据的高维问题,并寻找新的更好的策略来估计异质治疗效果。我们介绍了机器学习的主要主题,这些主题可能对能源和环境经济学的经济学家有用,并使用源自能源效率计划评估的真实数据示例来说明它们。

更新日期:2021-10-06
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