Specification of Evolving Privacy Policies for Online Social Networks
Paper in proceeding, 2016

Online Social Networks are ubiquitous, bringing not only numerous new possibilities but also big threats and challenges. Privacy is one of them. Most social networks today offer a limited set of (static) privacy settings, not being able to express dynamic policies. For instance, users might decide to protect their location during the night, or share information with difference audiences depending on their current position. In this paper we introduce T FPPF, a formal framework to express, and reason about, dynamic (and recurrent) privacy policies that are activated or deactivated by context (events) or time. Besides a formal policy language (T PPL), the framework includes a knowledge-based logic extended with (linear) temporal operators and a learning modality (T KBL). Policies, and formulae in the logic, are interpreted over (timed) traces representing the evolution of the social network. We prove that checking privacy policy conformance, and the model-checking problem for T KBL, are both decidable.

Electrical &

Engineering

Computer Science

Information Systems

LOGIC

Electronic

Author

Raul Pardo Jimenez

Chalmers, Computer Science and Engineering (Chalmers), Software Technology (Chalmers)

I. Kellyerova

C. Sanchez

Gerardo Schneider

University of Gothenburg

Proceedings 23rd International Symposium on Temporal Representation and Reasoning - Time 2016

70-79
978-1-5090-3825-1 (ISBN)

Subject Categories (SSIF 2011)

Computer and Information Science

DOI

10.1109/time.2016.15

ISBN

978-1-5090-3825-1

More information

Created

10/7/2017