Statistical Quantification of Differential Privacy - A Local Approach
Offered By: IEEE via YouTube
Course Description
Overview
Explore a 16-minute IEEE conference talk that delves into the statistical quantification of differential privacy using a local approach. Learn from researchers Önder Askin, Tim Kutta, and Holger Dette from Ruhr-University Bochum as they present their findings and methodologies in this important area of data privacy and security.
Syllabus
Statistical Quantification of Differential Privacy: A Local Approach
Taught by
IEEE Symposium on Security and Privacy
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