What Are the Chances? Explaining the Epsilon Parameter in Differential Privacy
March 01, 2023 ยท Declared Dead ยท ๐ USENIX Security Symposium
"No code URL or promise found in abstract"
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Authors
Priyanka Nanayakkara, Mary Anne Smart, Rachel Cummings, Gabriel Kaptchuk, Elissa Redmiles
arXiv ID
2303.00738
Category
cs.CR: Cryptography & Security
Cross-listed
cs.CY,
cs.HC
Citations
56
Venue
USENIX Security Symposium
Last Checked
3 months ago
Abstract
Differential privacy (DP) is a mathematical privacy notion increasingly deployed across government and industry. With DP, privacy protections are probabilistic: they are bounded by the privacy budget parameter, $ฮต$. Prior work in health and computational science finds that people struggle to reason about probabilistic risks. Yet, communicating the implications of $ฮต$ to people contributing their data is vital to avoiding privacy theater -- presenting meaningless privacy protection as meaningful -- and empowering more informed data-sharing decisions. Drawing on best practices in risk communication and usability, we develop three methods to convey probabilistic DP guarantees to end users: two that communicate odds and one offering concrete examples of DP outputs. We quantitatively evaluate these explanation methods in a vignette survey study ($n=963$) via three metrics: objective risk comprehension, subjective privacy understanding of DP guarantees, and self-efficacy. We find that odds-based explanation methods are more effective than (1) output-based methods and (2) state-of-the-art approaches that gloss over information about $ฮต$. Further, when offered information about $ฮต$, respondents are more willing to share their data than when presented with a state-of-the-art DP explanation; this willingness to share is sensitive to $ฮต$ values: as privacy protections weaken, respondents are less likely to share data.
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