Information Technologies Institute - Centre for Research and Technology Hellas, Thessaloniki, Greece.
DeustoTech, University of Deusto, Bilbao, Spain.
PLoS One. 2024 May 16;19(5):e0303214. doi: 10.1371/journal.pone.0303214. eCollection 2024.
Energy-related occupant behaviour in the built environment is considered crucial when aiming towards Energy Efficiency (EE), especially given the notion that people are most often unaware and disengaged regarding the impacts of energy-consuming habits. In order to affect such energy-related behaviour, various approaches have been employed, being the most common the provision of recommendations towards more energy-efficient actions. In this work, the authors extend prior research findings in an effort to automatically identify the optimal Persuasion Strategy (PS), out of ten pre-selected by experts, tailored to a user (i.e., the context to trigger a message, allocate a task or providing cues to enact an action). This process aims to successfully influence the employees' decisions about EE in tertiary buildings. The framework presented in this study utilizes cultural traits and socio-economic information. It is based on one of the largest survey datasets on this subject, comprising responses from 743 users collected through an online survey in four countries across Europe (Spain, Greece, Austria and the UK). The resulting framework was designed as a cascade of sequential data-driven prediction models. The first step employs a particular case of matrix factorisation to rank the ten PP in terms of preference for each user, followed by a random forest regression model that uses these rankings as a filtering step to compute scores for each PP and conclude with the best selection for each user. An ex-post assessment of the individual steps and the combined ensemble revealed increased accuracy over baseline non-personalised methods. Furthermore, the analysis also sheds light on important user characteristics to take into account for future interventions related to EE and the most effective persuasion strategies to adopt based on user data. Discussion and implications of the reported results are provided in the text regarding the flourishing field of personalisation to motivate pro-environmental behaviour change in tertiary buildings.
在追求能源效率(EE)时,建筑环境中的与能源相关的居住者行为被认为是至关重要的,尤其是考虑到人们通常对能源消耗习惯的影响缺乏意识和参与。为了影响这种与能源相关的行为,已经采用了各种方法,最常见的方法是提供更节能行动的建议。在这项工作中,作者扩展了先前的研究结果,努力自动识别十种预先由专家选择的最佳说服策略(PS),以适应用户(即触发消息的上下文、分配任务或提供线索以采取行动)。这个过程旨在成功影响员工在三级建筑中的 EE 决策。本研究提出的框架利用文化特征和社会经济信息。它基于关于这一主题的最大调查数据集之一,其中包括通过在欧洲四个国家(西班牙、希腊、奥地利和英国)进行的在线调查收集的 743 名用户的回复。该框架被设计为一系列顺序数据驱动的预测模型。第一步采用特定的矩阵分解来根据每个用户的偏好对十种 PP 进行排名,然后是随机森林回归模型,该模型使用这些排名作为过滤步骤来计算每种 PP 的分数,并为每个用户得出最佳选择。对单个步骤和组合集成的事后评估表明,与非个性化方法相比,准确性有所提高。此外,该分析还揭示了与未来与 EE 相关的干预措施以及根据用户数据采用的最有效说服策略有关的重要用户特征。文本中提供了关于个性化领域的讨论和报告结果的影响,以激励三级建筑中的环保行为改变。