On the Theory and Practice of Privacy Preserving Data Analysis
| Authors |
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| Publication date | 2016 |
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| Book title | Uncertainty in Artificial Intelligence |
| Book subtitle | proceedings of the Thirty-Second Conference (2016) : June 25-29, 2016, Jersey City, New Jersey, USA |
| ISBN (electronic) |
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| Event | 32nd Conference on Uncertainty in Artificial Intelligence |
| Article number | 45 |
| Pages (from-to) | 192-201 |
| Number of pages | 10 |
| Publisher | Corvallis, Oregon: AUAI Press |
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| Abstract |
Bayesian inference has great promise for the privacy-preserving analysis of sensitive data, as posterior sampling automatically preserves differential privacy, an algorithmic notion of data privacy, under certain conditions (Dimitrakakis et al., 2014; Wang et al., 2015b). While this one posterior sample (OPS) approach elegantly provides privacy “for free,” it is data inefficient in the sense of asymptotic relative efficiency (ARE). We show that a simple alternative based on the Laplace mechanism, the workhorse of differential privacy, is as asymptotically efficient as non-private posterior inference, under general assumptions. This technique also has practical advantages including efficient use of the privacy budget for MCMC. We demonstrate the practicality of our approach on a time-series analysis of sensitive military records from the Afghanistan and Iraq wars disclosed by the Wikileaks organization.
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| Document type | Conference contribution |
| Language | English |
| Published at | http://www.auai.org/uai2016/proceedings/papers/45.pdf http://auai.org/uai2016/proceedings/uai-2016-proceedings.pdf |
| Downloads |
45
(Accepted author manuscript)
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