The Privacy Paradox and Optimal Bias-Variance Trade-offs in Data Acquisition
Abstract
While users claim to be concerned about privacy, often they do little to protect their privacy in their online actions. One prominent explanation for this "privacy paradox" is that when an individual shares her data, it is not just her privacy that is compromised; the privacy of other individuals with correlated data is also compromised. This information leakage encourages oversharing of data and significantly impacts the incentives of individuals in online platforms. In this extended abstract, we discuss the design of mechanisms for data acquisition in settings with information leakage and verifiable data. We summarize work designing an incentive compatible mechanism that optimizes the worst-case tradeoff between bias and variance of the estimation subject to a budget constraint, where the worst-case is over the unknown correlation between costs and data. Additionally, we characterize the structure of the optimal mechanism in closed form and study monotonicity and non-monotonicity properties of the marketplace.
Additional Information
Copyright is held by author/owner(s). Online: 20 January 2022. Published: 20 January 2022.Attached Files
Published - 3512798.3512802.pdf
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Additional details
- Eprint ID
- 113051
- Resolver ID
- CaltechAUTHORS:20220121-870642000
- Created
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2022-01-22Created from EPrint's datestamp field
- Updated
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2022-01-22Created from EPrint's last_modified field