Uncertainty-aware Personal Assistant for Making Personalized Privacy Decisions
Gonul Ayci, Murat Sensoy, Arzucan \"Ozg\"ur, P{\i}nar Yolum

TL;DR
This paper introduces an uncertainty-aware personal assistant that leverages evidential deep learning to classify privacy labels, explicitly model uncertainty, and personalize privacy recommendations for individual users, enhancing privacy preservation.
Contribution
It presents a novel privacy assistant that models uncertainty explicitly and personalizes privacy decisions using evidential deep learning, addressing ambiguity and individual privacy understanding.
Findings
Accurately identifies uncertain privacy cases
Personalizes recommendations based on user privacy understanding
Helps users preserve privacy effectively
Abstract
Many software systems, such as online social networks enable users to share information about themselves. While the action of sharing is simple, it requires an elaborate thought process on privacy: what to share, with whom to share, and for what purposes. Thinking about these for each piece of content to be shared is tedious. Recent approaches to tackle this problem build personal assistants that can help users by learning what is private over time and recommending privacy labels such as private or public to individual content that a user considers sharing. However, privacy is inherently ambiguous and highly personal. Existing approaches to recommend privacy decisions do not address these aspects of privacy sufficiently. Ideally, a personal assistant should be able to adjust its recommendation based on a given user, considering that user's privacy understanding. Moreover, the personal…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Privacy-Preserving Technologies in Data · Ethics and Social Impacts of AI
