Forgetting the Forgotten with Letheia, Concealing Content Deletion from Persistent Observers
Mohsen Minaei, Mainack Mondal, Patrick Loiseau, Krishna Gummadi,, Aniket Kate

TL;DR
Lethe is a novel social platform mechanism that obscures whether posts are permanently deleted or temporarily withdrawn, enhancing user privacy while maintaining high content availability and complicating adversarial detection.
Contribution
Introducing Lethe, a system that uses intermittent withdrawals and resurrections to protect deleted content from long-term adversarial observation.
Findings
Provides up to 3 months of deletion privacy against powerful adversaries.
Achieves 95% content availability despite privacy-preserving withdrawals.
Reduces adversarial detection precision to 20%.
Abstract
Most social platforms offer mechanisms allowing users to delete their posts, and a significant fraction of users exercise this right to be forgotten. However, ironically, users' attempt to reduce attention to sensitive posts via deletion, in practice, attracts unwanted attention from stalkers specifically to those posts. Thus, deletions may leave users more vulnerable to attacks on their privacy in general. Users hoping to make their posts forgotten face a "damned if I do, damned if I don't" dilemma. Many are shifting towards ephemeral social platform like Snapchat, which will deprive us of important user-data archival. In the form of intermittent withdrawals, we present, Lethe, a novel solution to this problem of forgetting the forgotten. If the next-generation social platforms are willing to give up the uninterrupted availability of non-deleted posts by a very small fraction, Lethe…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Privacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting
