Energy efficiency can deliver for climate policy: Evidence from machine learning-based targeting

IF 4.8 1区 经济学 Q1 ECONOMICS Journal of Public Economics Pub Date : 2024-04-29 DOI:10.1016/j.jpubeco.2024.105098
Peter Christensen , Paul Francisco , Erica Myers , Hansen Shao , Mateus Souza
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Abstract

Building energy efficiency has been a cornerstone of greenhouse gas mitigation strategies for decades. However, impact evaluations have revealed that energy savings typically fall short of engineering model forecasts that currently guide funding decisions. This creates a resource allocation problem that impedes progress on climate change. Using data from the Illinois implementation of the U.S.’s largest energy efficiency program, we demonstrate that a data-driven approach to predicting retrofit impacts based on previously realized outcomes is more accurate than the status quo engineering models. Targeting high-return interventions based on these predictions dramatically increases net social benefits, from $0.93 to $1.23 per dollar invested.

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能源效率可促进气候政策:基于机器学习的目标定位证据
几十年来,建筑节能一直是温室气体减排战略的基石。然而,影响评估显示,节能效果通常达不到目前指导资金决策的工程模型预测。这就造成了资源分配问题,阻碍了气候变化方面的进展。利用伊利诺伊州实施的美国最大能效项目的数据,我们证明了基于以前实现的结果来预测改造影响的数据驱动方法比现状的工程模型更准确。根据这些预测结果有针对性地采取高回报干预措施,可显著提高净社会效益,从每投资 1 美元产生 0.93 美元提高到 1.23 美元。
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来源期刊
CiteScore
14.10
自引率
2.00%
发文量
139
审稿时长
70 days
期刊介绍: The Journal of Public Economics aims to promote original scientific research in the field of public economics, focusing on the utilization of contemporary economic theory and quantitative analysis methodologies. It serves as a platform for the international scholarly community to engage in discussions on public policy matters.
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