Internet Localization of Multi-Party Relay Users: Inherent Friction Between Internet Services and User Privacy
Sean Flynn, Francesco Bronzino, Paul Schmitt

TL;DR
This paper investigates the impact of privacy-preserving Multi-Party Relay architectures, like Apple's Private Relay, on IP geolocation accuracy, revealing significant errors and the need for new location inference methods.
Contribution
It provides an empirical analysis of IP geolocation performance for Private Relay users, highlighting the inadequacy of existing methods in privacy-centric contexts.
Findings
Median location errors exceed 1,000 miles in some cases
Existing geolocation databases perform poorly for MPR users
Privacy-focused location inference techniques are needed
Abstract
Internet privacy is increasingly important on the modern Internet. Users are looking to control the trail of data that they leave behind on the systems that they interact with. Multi-Party Relay (MPR) architectures lower the traditional barriers to adoption of privacy enhancing technologies on the Internet. MPRs are unique from legacy architectures in that they are able to offer privacy guarantees without paying significant performance penalties. Apple's iCloud Private Relay is a recently deployed MPR service, creating the potential for widespread consumer adoption of the architecture. However, many current Internet-scale systems are designed based on assumptions that may no longer hold for users of privacy enhancing systems like Private Relay. There are inherent tensions between systems that rely on data about users -- estimated location of a user based on their IP address, for example…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Privacy-Preserving Technologies in Data · Privacy, Security, and Data Protection
