Affiliation:
1. Utrecht University, Princetonplein, Utrecht, The Netherlands
Abstract
Privacy is the right of individuals to keep personal information to themselves. When individuals use online systems, they should be given the right to decide what information they would like to share and what to keep private. When a piece of information pertains only to a single individual, preserving privacy is possible by providing the right access options to the user. However, when a piece of information pertains to multiple individuals, such as a picture of a group of friends or a collaboratively edited document, deciding how to share this information and with whom is challenging. The problem becomes more difficult when the individuals who are affected by the information have different, possibly conflicting privacy constraints. Resolving this problem requires a mechanism that takes into account the relevant individuals’ concerns to decide on the privacy configuration of information. Because these decisions need to be made frequently (i.e., per each piece of shared content), the mechanism should be automated. This article presents a personal assistant to help end-users with managing the privacy of their content. When some content that belongs to multiple users is about to be shared, the personal assistants of the users employ an auction-based privacy mechanism to regulate the privacy of the content. To do so, each personal assistant learns the preferences of its user over time and produces bids accordingly. Our proposed personal assistant is capable of assisting users with different personas and thus ensures that people benefit from it as they need it. Our evaluations over multiagent simulations with online social network content show that our proposed personal assistant enables privacy-respecting content sharing.
Funder
Hybrid Intelligence Center
Dutch Ministry of Education, Culture and Science through the Netherlands Organisation for Scientific Research
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications
Cited by
7 articles.
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1. Bring Privacy To The Table: Interactive Negotiation for Privacy Settings of Shared Sensing Devices;Proceedings of the CHI Conference on Human Factors in Computing Systems;2024-05-11
2. Systematic review on privacy categorisation;Computer Science Review;2023-08
3. Can We Explain Privacy?;IEEE Internet Computing;2023-07
4. GMAP 2023: 2nd Workshop on Group Modeling, Adaptation and Personalization;Adjunct Proceedings of the 31st ACM Conference on User Modeling, Adaptation and Personalization;2023-06-16
5. Uncertainty-Aware Personal Assistant for Making Personalized Privacy Decisions;ACM Transactions on Internet Technology;2023-02-28