Buying Private Data without Verification
Arpita Ghosh, Katrina Ligett, Aaron Roth, Grant Schoenebeck

TL;DR
This paper introduces a differentially private peer-prediction mechanism enabling accurate aggregation of private data from strategic, privacy-sensitive individuals without verifying individual reports, ensuring privacy and incentivizing truthful participation.
Contribution
It proposes a novel mechanism combining differential privacy and peer prediction to accurately estimate population statistics with minimal privacy costs, even when individual costs are only approximately known.
Findings
Mechanism guarantees $$-differential privacy for each participant.
Accurate estimation achieved as a Bayes-Nash equilibrium.
Survey costs approach zero as population size increases.
Abstract
We consider the problem of designing a survey to aggregate non-verifiable information from a privacy-sensitive population: an analyst wants to compute some aggregate statistic from the private bits held by each member of a population, but cannot verify the correctness of the bits reported by participants in his survey. Individuals in the population are strategic agents with a cost for privacy, \ie, they not only account for the payments they expect to receive from the mechanism, but also their privacy costs from any information revealed about them by the mechanism's outcome---the computed statistic as well as the payments---to determine their utilities. How can the analyst design payments to obtain an accurate estimate of the population statistic when individuals strategically decide both whether to participate and whether to truthfully report their sensitive information? We design a…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Auction Theory and Applications
