The Limits of Pan Privacy and Shuffle Privacy for Learning and Estimation
September 17, 2020 ยท Declared Dead ยท ๐ Symposium on the Theory of Computing
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Authors
Albert Cheu, Jonathan Ullman
arXiv ID
2009.08000
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CR,
cs.LG
Citations
24
Venue
Symposium on the Theory of Computing
Last Checked
3 months ago
Abstract
There has been a recent wave of interest in intermediate trust models for differential privacy that eliminate the need for a fully trusted central data collector, but overcome the limitations of local differential privacy. This interest has led to the introduction of the shuffle model (Cheu et al., EUROCRYPT 2019; Erlingsson et al., SODA 2019) and revisiting the pan-private model (Dwork et al., ITCS 2010). The message of this line of work is that, for a variety of low-dimensional problems -- such as counts, means, and histograms -- these intermediate models offer nearly as much power as central differential privacy. However, there has been considerably less success using these models for high-dimensional learning and estimation problems. In this work, we show that, for a variety of high-dimensional learning and estimation problems, both the shuffle model and the pan-private model inherently incur an exponential price in sample complexity relative to the central model. For example, we show that, private agnostic learning of parity functions over $d$ bits requires $ฮฉ(2^{d/2})$ samples in these models, and privately selecting the most common attribute from a set of $d$ choices requires $ฮฉ(d^{1/2})$ samples, both of which are exponential separations from the central model. Our work gives the first non-trivial lower bounds for these problems for both the pan-private model and the general multi-message shuffle model.
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