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The Privacy-Utility Trade-off in the Topics API
We analyze the re-identification risks for individual Internet users and the utility provided to advertising companies by the Topics API, i.e. learning the most popular topics and distinguishing between real and random topics. We provide theoretical results dependent only on the API parameters that can be readily applied to evaluate the privacy and utility implications of future API updates, including novel general upper-bounds that account for adversaries with access to unknown, arbitrary side information, the value of the differential privacy parameter ε, and experimental results on real-world data that validate our theoretical model.
Mário S. Alvim
,
Natasha Fernandes
,
Annabelle McIver
,
Gabriel H. Nunes
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Dataset
DOI
AOL Dataset for Browsing History and Topics of Interest
This record provides the datasets of the paper
The Privacy-Utility Trade-off in the Topics API
.
Gabriel H. Nunes
Cite
Source Document
DOI
Topics API Analysis
This repository provides the experimental results of the paper
The Privacy-Utility Trade-off in the Topics API
.
Gabriel H. Nunes
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Code
Dataset
Source Document
DOI
A Novel Analysis of Utility in Privacy Pipelines, Using Kronecker Products and Quantitative Information Flow
We combine Kronecker products, and quantitative information flow, to give a novel formal analysis for the fine-grained verification of utility in complex privacy pipelines. The combination explains a surprising anomaly in the behaviour of utility of privacy-preserving pipelines - that sometimes a reduction in privacy results also in a decrease in utility. We demonstrate our results on a number of common privacy-preserving designs.
Mário S. Alvim
,
Natasha Fernandes
,
Annabelle McIver
,
Carroll Morgan
,
Gabriel H. Nunes
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DOI
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