Agents for Preserving Privacy: Learning and Decision Making Collaboratively

Publication date

2020

Authors

Ulusoy, O.ISNI 0000000492958848
Yolum Birbil, PinarORCID 0000-0001-7848-1834ISNI 0000000492960622

Editors

Bassiliades, Nick
Chalkiadakis, Georgios
Jonge, Dave de

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Privacy is a right of individuals to keep personal information to themselves. Often online systems enable their users to select what information they would like to share with others and what information to keep private. When an information pertains only to a single individual, it is possible to preserve privacy by providing the right access options to the user. However, when an 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 as individuals might have conflicting privacy constraints. Resolving this problem requires an automated mechanism that takes into account the relevant individuals’ concerns to decide on the privacy configuration of information. Accordingly, this paper proposes an auction-based privacy mechanism to manage the privacy of users when information related to multiple individuals are at stake. We propose to have a software agent that acts on behalf of each user to enter privacy auctions, learn the subjective privacy valuations of the individuals over time, and to bid to respect their privacy. We show the workings of our proposed approach over multiagent simulations.

Keywords

Multiagent systems, Online social networks, Privacy, Taverne

Citation

Ulusoy, O & Yolum, P 2020, Agents for Preserving Privacy: Learning and Decision Making Collaboratively. in N Bassiliades, G Chalkiadakis & D D Jonge (eds), Multi-Agent Systems and Agreement Technologies : 17th European Conference, EUMAS 2020, and 7th International Conference, AT 2020, Thessaloniki, Greece, September 14-15, 2020, Revised Selected Papers. 1 edn, Lecture Notes in Computer Science , vol. 12520, Springer, pp. 116-131. https://doi.org/10.1007/978-3-030-66412-1_8