Designing for User Privacy: Integrating Differential Privacy into Ad Measurement Systems - PEPR '24
Offered By: USENIX via YouTube
Course Description
Overview
Explore a 20-minute conference talk from PEPR '24 that delves into integrating differential privacy into ad measurement systems. Learn about a proposed initiative that offers formal privacy guarantees for cross-site advertising measurement outcomes, with a focus on real-time reporting in practical advertising campaigns. Discover how this approach maintains system utility while providing stronger user-level privacy guarantees through differential privacy. Examine the results of experiments conducted with real-world advertising campaign datasets, demonstrating the effectiveness of this proposal in enhancing measurement accuracy and advancing privacy-preserving advertising measurement techniques. Gain insights into addressing privacy concerns related to cross-site user tracking in multi-touch advertising measurement systems, and understand the impact of legislative actions like GDPR and industry initiatives such as Apple's App Tracking Transparency.
Syllabus
PEPR '24 - Designing for User Privacy: Integrating Differential Privacy into Ad Measurement...
Taught by
USENIX
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