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A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS

Publication ,  Journal Article
Nixon, MP; Barrientos, AF; Reiter, JP; Slavkovic, A
Published in: Journal of Privacy and Confidentiality
July 29, 2022

Several algorithms exist for creating differentially private counts from contingency tables, such as two-way or three-way marginal counts. The resulting noisy counts generally do not correspond to a coherent contingency table, so that some post-processing step is needed if one wants the released counts to correspond to a coherent contingency table. We present a latent class modeling approach for post-processing differentially private marginal counts that can be used (i) to create differentially private synthetic data from the set of marginal counts, and (ii) to enable posterior inferences about the confidential counts. We illustrate the approach using a subset of the 2016 American Community Survey Public Use Microdata Sets and the 2004 National Long Term Care Survey.

Duke Scholars

Published In

Journal of Privacy and Confidentiality

DOI

EISSN

2575-8527

Publication Date

July 29, 2022

Volume

12

Issue

1
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Nixon, M. P., Barrientos, A. F., Reiter, J. P., & Slavkovic, A. (2022). A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS. Journal of Privacy and Confidentiality, 12(1). https://doi.org/10.29012/jpc.768
Nixon, M. P., A. F. Barrientos, J. P. Reiter, and A. Slavkovic. “A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS.” Journal of Privacy and Confidentiality 12, no. 1 (July 29, 2022). https://doi.org/10.29012/jpc.768.
Nixon MP, Barrientos AF, Reiter JP, Slavkovic A. A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS. Journal of Privacy and Confidentiality. 2022 Jul 29;12(1).
Nixon, M. P., et al. “A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS.” Journal of Privacy and Confidentiality, vol. 12, no. 1, July 2022. Scopus, doi:10.29012/jpc.768.
Nixon MP, Barrientos AF, Reiter JP, Slavkovic A. A LATENT CLASS MODELING APPROACH FOR GENERATING SYNTHETIC DATA AND MAKING POSTERIOR INFERENCES FROM DIFFERENTIALLY PRIVATE COUNTS. Journal of Privacy and Confidentiality. 2022 Jul 29;12(1).

Published In

Journal of Privacy and Confidentiality

DOI

EISSN

2575-8527

Publication Date

July 29, 2022

Volume

12

Issue

1