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Main Authors: D'Amico, Bernardino, Pomponi, Francesco, Arehart, Jay H., Khaddour, Lina
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.04478
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author D'Amico, Bernardino
Pomponi, Francesco
Arehart, Jay H.
Khaddour, Lina
author_facet D'Amico, Bernardino
Pomponi, Francesco
Arehart, Jay H.
Khaddour, Lina
contents Reducing domestic energy demand is central to climate mitigation and fuel poverty strategies, yet the impact of energy efficiency interventions is highly heterogeneous. Using a causal machine learning model trained on nationally representative data of the English housing stock, we estimate average and conditional treatment effects of wall insulation on gas consumption, focusing on distributional effects across energy burden subgroups. While interventions reduce gas demand on average (by as much as 19 percent), low energy burden groups achieve substantial savings, whereas those experiencing high energy burdens see little to no reduction. This pattern reflects a behaviourally-driven mechanism: households constrained by high costs-to-income ratios (e.g. more than 0.1) reallocate savings toward improved thermal comfort rather than lowering consumption. Far from wasteful, such responses represent rational adjustments in contexts of prior deprivation, with potential co-benefits for health and well-being. These findings call for a broader evaluation framework that accounts for both climate impacts and the equity implications of domestic energy policy.
format Preprint
id arxiv_https___arxiv_org_abs_2508_04478
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Who cuts emissions, who turns up the heat? causal machine learning estimates of energy efficiency interventions
D'Amico, Bernardino
Pomponi, Francesco
Arehart, Jay H.
Khaddour, Lina
Machine Learning
Reducing domestic energy demand is central to climate mitigation and fuel poverty strategies, yet the impact of energy efficiency interventions is highly heterogeneous. Using a causal machine learning model trained on nationally representative data of the English housing stock, we estimate average and conditional treatment effects of wall insulation on gas consumption, focusing on distributional effects across energy burden subgroups. While interventions reduce gas demand on average (by as much as 19 percent), low energy burden groups achieve substantial savings, whereas those experiencing high energy burdens see little to no reduction. This pattern reflects a behaviourally-driven mechanism: households constrained by high costs-to-income ratios (e.g. more than 0.1) reallocate savings toward improved thermal comfort rather than lowering consumption. Far from wasteful, such responses represent rational adjustments in contexts of prior deprivation, with potential co-benefits for health and well-being. These findings call for a broader evaluation framework that accounts for both climate impacts and the equity implications of domestic energy policy.
title Who cuts emissions, who turns up the heat? causal machine learning estimates of energy efficiency interventions
topic Machine Learning
url https://arxiv.org/abs/2508.04478