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Main Authors: Li, Zonghan, Tong, Song, Liu, Yi, Peng, Kaiping, Wang, Chunyan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.11531
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author Li, Zonghan
Tong, Song
Liu, Yi
Peng, Kaiping
Wang, Chunyan
author_facet Li, Zonghan
Tong, Song
Liu, Yi
Peng, Kaiping
Wang, Chunyan
contents The increasing amount of pressure related to water and energy shortages has increased the urgency of cultivating individual conservation behaviors. While the concept of nudging, i.e., providing usage-based feedback, has shown promise in encouraging conservation behaviors, its efficacy is often constrained by the lack of targeted and actionable content. This study investigates the impact of the use of large language models (LLMs) to provide tailored conservation suggestions for conservation intentions and their rationale. Through a survey experiment with 1,515 university participants, we compare three virtual nudging scenarios: no nudging, traditional nudging with usage statistics, and LLM-powered nudging with usage statistics and personalized conservation suggestions. The results of statistical analyses and causal forest modeling reveal that nudging led to an increase in conservation intentions among 86.9%-98.0% of the participants. LLM-powered nudging achieved a maximum increase of 18.0% in conservation intentions, surpassing traditional nudging by 88.6%. Furthermore, structural equation modeling results reveal that exposure to LLM-powered nudges enhances self-efficacy and outcome expectations while diminishing dependence on social norms, thereby increasing intrinsic motivation to conserve. These findings highlight the transformative potential of LLMs in promoting individual water and energy conservation, representing a new frontier in the design of sustainable behavioral interventions and resource management.
format Preprint
id arxiv_https___arxiv_org_abs_2503_11531
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Potential of large language model-powered nudges for promoting daily water and energy conservation
Li, Zonghan
Tong, Song
Liu, Yi
Peng, Kaiping
Wang, Chunyan
Computers and Society
Artificial Intelligence
The increasing amount of pressure related to water and energy shortages has increased the urgency of cultivating individual conservation behaviors. While the concept of nudging, i.e., providing usage-based feedback, has shown promise in encouraging conservation behaviors, its efficacy is often constrained by the lack of targeted and actionable content. This study investigates the impact of the use of large language models (LLMs) to provide tailored conservation suggestions for conservation intentions and their rationale. Through a survey experiment with 1,515 university participants, we compare three virtual nudging scenarios: no nudging, traditional nudging with usage statistics, and LLM-powered nudging with usage statistics and personalized conservation suggestions. The results of statistical analyses and causal forest modeling reveal that nudging led to an increase in conservation intentions among 86.9%-98.0% of the participants. LLM-powered nudging achieved a maximum increase of 18.0% in conservation intentions, surpassing traditional nudging by 88.6%. Furthermore, structural equation modeling results reveal that exposure to LLM-powered nudges enhances self-efficacy and outcome expectations while diminishing dependence on social norms, thereby increasing intrinsic motivation to conserve. These findings highlight the transformative potential of LLMs in promoting individual water and energy conservation, representing a new frontier in the design of sustainable behavioral interventions and resource management.
title Potential of large language model-powered nudges for promoting daily water and energy conservation
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2503.11531