Visible to the public At Your Own Risk: Shaping Privacy Heuristics for Online Self-Disclosure

TitleAt Your Own Risk: Shaping Privacy Heuristics for Online Self-Disclosure
Publication TypeConference Paper
Year of Publication2018
AuthorsFerreyra, N. E. Díaz, Meisy, R., Heiselz, M.
Conference Name2018 16th Annual Conference on Privacy, Security and Trust (PST)
ISBN Number978-1-5386-7493-2
Keywordsacceptance trees, adaptive privacy, audience component, aware- ness, data privacy, data structure representative, data structures, Decision trees, Employment, Facebook, heuristics, human-computer interaction, online self-disclosure, potential privacy risks, privacy, privacy awareness, privacy heuristics, private information, pubcrawl, recurrent regrettable scenarios, resilience, Resiliency, risk analysis, Scalability, Security Heuristics, sensitive information, social network sites, social networking (online), Task Analysis, user-centred privacy preferences
Abstract

Revealing private and sensitive information on Social Network Sites (SNSs) like Facebook is a common practice which sometimes results in unwanted incidents for the users. One approach for helping users to avoid regrettable scenarios is through awareness mechanisms which inform a priori about the potential privacy risks of a self-disclosure act. Privacy heuristics are instruments which describe recurrent regrettable scenarios and can support the generation of privacy awareness. One important component of a heuristic is the group of people who should not access specific private information under a certain privacy risk. However, specifying an exhaustive list of unwanted recipients for a given regrettable scenario can be a tedious task which necessarily demands the user's intervention. In this paper, we introduce an approach based on decision trees to instantiate the audience component of privacy heuristics with minor intervention from the users. We introduce Disclosure- Acceptance Trees, a data structure representative of the audience component of a heuristic and describe a method for their generation out of user-centred privacy preferences.

URLhttps://ieeexplore.ieee.org/document/8514186
DOI10.1109/PST.2018.8514186
Citation Keyferreyra_at_2018