Personalized Privacy Preservation in Consumer Mobile Trajectories

成果类型:
Article
署名作者:
Macha, Meghanath; Foutz, Natasha Zhang; Li, Beibei; Ghose, Anindya
署名单位:
Carnegie Mellon University; University of Virginia
刊物名称:
INFORMATION SYSTEMS RESEARCH
ISSN/ISSBN:
1047-7047
DOI:
10.1287/isre.2023.1227
发表日期:
2024
关键词:
marketing analytics lstm
摘要:
Ubiquitous mobile technologies have been producing massive swaths of consumer location data, giving rise to an elaborate multibillion-dollar ecosystem. In this ecosystem, some consumers share personal data in exchange for economic benefits, including personalized recommendations; data aggregators curate and monetize data by sharing data with advertisers, and advertisers often utilize such data for location-based marketing. While these various entities can benefit from such data sharing, privacy risks can prevail. This creates an opportunity for data aggregators to implement an effective privacy preserving framework to balance potential privacy risks to consumers and data utilities to advertisers before sharing data with advertisers. We hence propose a personalized and flexible framework that quantifies personalized privacy risks, performs personalized data obfuscation, and flexibly accommodates a variety of risks, utilities, and acceptable levels of risk utility trade-off. Leveraging machine learning methods, we illustrate the power of the framework with two privacy risks and two utilities. Validating the framework on one million consumer trajectories, we demonstrate potential privacy risks in the absence of data obfuscation. Outperforming ten baselines from the latest literature, the proposed framework significantly reduces each consumer's privacy risk while preserving an advertiser's utility. As industries increasingly unleash the power of location big data, this research offers an imperatively needed framework to balance privacy risks and data utilities, and to sustain a secure and self-governing multibillion-dollar location ecosystem.
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