Oblivion: Mitigating Privacy Leaks by Controlling the Discoverability of Online Information
Milivoj Simeonovski, Fabian Bendun, Muhammad Rizwan Asghar, Michael, Backes, Ninja Marnau, Peter Druschel

TL;DR
Oblivion is a scalable, privacy-preserving framework that automates the process of individuals requesting the removal of personal information from search engines, enhancing privacy rights enforcement.
Contribution
It introduces a novel automated, provable, and privacy-preserving system for managing the right to be forgotten at scale.
Findings
Handles 278 removal requests per second
Automates personal info detection using NLP and image recognition
Provides provable eligibility to prevent misuse
Abstract
Search engines are the prevalently used tools to collect information about individuals on the Internet. Search results typically comprise a variety of sources that contain personal information -- either intentionally released by the person herself, or unintentionally leaked or published by third parties, often with detrimental effects on the individual's privacy. To grant individuals the ability to regain control over their disseminated personal information, the European Court of Justice recently ruled that EU citizens have a right to be forgotten in the sense that indexing systems, must offer them technical means to request removal of links from search results that point to sources violating their data protection rights. As of now, these technical means consist of a web form that requires a user to manually identify all relevant links upfront and to insert them into the web form,…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · User Authentication and Security Systems · Privacy-Preserving Technologies in Data
