Statistic Selection and MCMC for Differentially Private Bayesian Estimation
Baris Alparslan, Sinan Yildirim

TL;DR
This paper develops methods for selecting optimal statistics and performing Bayesian inference under differential privacy constraints, using Fisher information and MCMC algorithms, with practical numerical examples.
Contribution
It introduces Fisher information-based criteria for statistic selection and proposes new MCMC algorithms for private Bayesian inference, addressing a gap in privacy-preserving statistical analysis.
Findings
Fisher information effectively predicts Bayesian estimator performance.
Optimal statistic choice varies under privacy constraints.
Proposed MCMC algorithms are effective for different privacy settings.
Abstract
This paper concerns differentially private Bayesian estimation of the parameters of a population distribution, when a statistic of a sample from that population is shared in noise to provide differential privacy. This work mainly addresses two problems: (1) What statistic of the sample should be shared privately? For the first question, i.e., the one about statistic selection, we promote using the Fisher information. We find out that, the statistic that is most informative in a non-privacy setting may not be the optimal choice under the privacy restrictions. We provide several examples to support that point. We consider several types of data sharing settings and propose several Monte Carlo-based numerical estimation methods for calculating the Fisher information for those settings. The second question concerns inference: (2) Based on the shared statistics, how could we perform…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Statistical Methods and Bayesian Inference · Markov Chains and Monte Carlo Methods
