Literature DB >> 25214699

Estimating Identification Disclosure Risk Using Mixed Membership Models.

Daniel Manrique-Vallier1, Jerome P Reiter2.   

Abstract

Statistical agencies and other organizations that disseminate data are obligated to protect data subjects' confidentiality. For example, ill-intentioned individuals might link data subjects to records in other databases by matching on common characteristics (keys). Successful links are particularly problematic for data subjects with combinations of keys that are unique in the population. Hence, as part of their assessments of disclosure risks, many data stewards estimate the probabilities that sample uniques on sets of discrete keys are also population uniques on those keys. This is typically done using log-linear modeling on the keys. However, log-linear models can yield biased estimates of cell probabilities for sparse contingency tables with many zero counts, which often occurs in databases with many keys. This bias can result in unreliable estimates of probabilities of uniqueness and, hence, misrepresentations of disclosure risks. We propose an alternative to log-linear models for datasets with sparse keys based on a Bayesian version of grade of membership (GoM) models. We present a Bayesian GoM model for multinomial variables and offer an MCMC algorithm for fitting the model. We evaluate the approach by treating data from a recent US Census Bureau public use microdata sample as a population, taking simple random samples from that population, and benchmarking estimated probabilities of uniqueness against population values. Compared to log-linear models, GoM models provide more accurate estimates of the total number of uniques in the samples. Additionally, they offer record-level predictions of uniqueness that dominate those based on log-linear models.

Entities:  

Keywords:  Confidentiality; Contingency table; Disclosure; Grade of membership; Latent class

Year:  2012        PMID: 25214699      PMCID: PMC4159106          DOI: 10.1080/01621459.2012.710508

Source DB:  PubMed          Journal:  J Am Stat Assoc        ISSN: 0162-1459            Impact factor:   5.033


  6 in total

1.  Inference of population structure using multilocus genotype data.

Authors:  J K Pritchard; M Stephens; P Donnelly
Journal:  Genetics       Date:  2000-06       Impact factor: 4.562

2.  Mixed-membership models of scientific publications.

Authors:  Elena Erosheva; Stephen Fienberg; John Lafferty
Journal:  Proc Natl Acad Sci U S A       Date:  2004-03-12       Impact factor: 11.205

3.  Population size estimation using individual level mixture models.

Authors:  Daniel Manrique-Vallier; Stephen E Fienberg
Journal:  Biom J       Date:  2008-12       Impact factor: 2.207

4.  DESCRIBING DISABILITY THROUGH INDIVIDUAL-LEVEL MIXTURE MODELS FOR MULTIVARIATE BINARY DATA.

Authors:  Elena A Erosheva; Stephen E Fienberg; Cyrille Joutard
Journal:  Ann Appl Stat       Date:  2007       Impact factor: 2.083

5.  Mixed Membership Stochastic Blockmodels.

Authors:  Edoardo M Airoldi; David M Blei; Stephen E Fienberg; Eric P Xing
Journal:  J Mach Learn Res       Date:  2008-09       Impact factor: 3.654

6.  Mathematical typology: a grade of membership technique for obtaining disease definition.

Authors:  M A Woodbury; J Clive; A Garson
Journal:  Comput Biomed Res       Date:  1978-06
  6 in total
  2 in total

1.  Imputation of confidential data sets with spatial locations using disease mapping models.

Authors:  Thais Paiva; Avishek Chakraborty; Jerry Reiter; Alan Gelfand
Journal:  Stat Med       Date:  2014-01-07       Impact factor: 2.373

2.  Assessing and Minimizing Re-identification Risk in Research Data Derived from Health Care Records.

Authors:  Gregory E Simon; Susan M Shortreed; R Yates Coley; Robert B Penfold; Rebecca C Rossom; Beth E Waitzfelder; Katherine Sanchez; Frances L Lynch
Journal:  EGEMS (Wash DC)       Date:  2019-03-29
  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.