Department of Systems Engineering, University of Virginia, Charlottesville, VA, 22904, USA.
Department of Civil and Environmental Engineering, Stanford University, Stanford, CA, 94305, USA.
Sci Rep. 2023 Mar 11;13(1):4073. doi: 10.1038/s41598-023-30788-5.
Building management systems tout numerous benefits, such as energy efficiency and occupant comfort but rely on vast amounts of data from various sensors. Advancements in machine learning algorithms make it possible to extract personal information about occupants and their activities beyond the intended design of a non-intrusive sensor. However, occupants are not informed of data collection and possess different privacy preferences and thresholds for privacy loss. While privacy perceptions and preferences are most understood in smart homes, limited studies have evaluated these factors in smart office buildings, where there are more users and different privacy risks. To better understand occupants' perceptions and privacy preferences, we conducted twenty-four semi-structured interviews between April 2022 and May 2022 on occupants of a smart office building. We found that data modality features and personal features contribute to people's privacy preferences. The features of the collected modality define data modality features - spatial, security, and temporal context. In contrast, personal features consist of one's awareness of data modality features and data inferences, definitions of privacy and security, and the available rewards and utility. Our proposed model of people's privacy preferences in smart office buildings helps design more effective measures to improve people's privacy.
楼宇管理系统宣传了许多好处,例如节能和提高居住舒适度,但这依赖于大量来自各种传感器的数据。机器学习算法的进步使得从非侵入式传感器的预期设计之外提取有关居住者及其活动的个人信息成为可能。然而,居住者没有被告知数据的收集情况,并且他们对隐私信息泄露的隐私偏好和阈值存在差异。虽然在智能家居中最能理解隐私感知和偏好,但在智能办公楼中,这些因素的研究有限,因为智能办公楼中有更多的用户和不同的隐私风险。为了更好地了解居住者的感知和隐私偏好,我们于 2022 年 4 月至 5 月期间对智能办公楼的居住者进行了二十四次半结构化访谈。我们发现,数据模态特征和个人特征会影响人们的隐私偏好。收集模态的特征定义了数据模态特征——空间、安全和时间上下文。相比之下,个人特征包括对数据模态特征和数据推断、隐私和安全的定义、可用奖励和效用的认识。我们提出的智能办公楼中人们隐私偏好的模型有助于设计更有效的措施来提高人们的隐私。