TL;DR
This paper introduces health tokens using differential privacy to estimate COVID-19 risk collectively, aiming to prevent discrimination while maintaining useful aggregate data for public health decisions.
Contribution
It proposes a novel non-discriminatory health token system leveraging differential privacy for COVID-19 risk estimation.
Findings
Error as low as 0.03 for groups of 500+
Viable in identity-free contexts
Prototype demonstrates practicality
Abstract
In the fight against Covid-19, many governments and businesses are in the process of evaluating, trialling and even implementing so-called immunity passports. Also known as antibody or health certificates, there is a clear demand for any technology that could allow people to return to work and other crowded places without placing others at risk. One of the major criticisms of such systems is that they could be misused to unfairly discriminate against those without immunity, allowing the formation of an `immuno-privileged' class of people. In this work we are motivated to explore an alternative technical solution that is non-discriminatory by design. In particular we propose health tokens -- randomised health certificates which, using methods from differential privacy, allow individual test results to be randomised whilst still allowing useful aggregate risk estimates to be calculated.…
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