Private Posterior distributions from Variational approximations
Privacy preserving mechanisms such as differential privacy inject additional randomness in the form of noise in the data, beyond the sampling mechanism. Ignoring this additional noise can lead to inaccurate and invalid inferences. In this paper, we incorporate the privacy mechanism explicitly into t...
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Zusammenfassung: | Privacy preserving mechanisms such as differential privacy inject additional
randomness in the form of noise in the data, beyond the sampling mechanism.
Ignoring this additional noise can lead to inaccurate and invalid inferences.
In this paper, we incorporate the privacy mechanism explicitly into the
likelihood function by treating the original data as missing, with an end goal
of estimating posterior distributions over model parameters. This leads to a
principled way of performing valid statistical inference using private data,
however, the corresponding likelihoods are intractable. In this paper, we
derive fast and accurate variational approximations to tackle such intractable
likelihoods that arise due to privacy. We focus on estimating posterior
distributions of parameters of the naive Bayes log-linear model, where the
sufficient statistics of this model are shared using a differentially private
interface. Using a simulation study, we show that the posterior approximations
outperform the naive method of ignoring the noise addition mechanism. |
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DOI: | 10.48550/arxiv.1511.07896 |