Measuring Risk of Re-Identification in Microdata: State-of-the Art and New Directions

Author:

Shlomo Natalie1,Skinner Chris2

Affiliation:

1. Social Statistics Department, School of Social Sciences, University of Manchester , Manchester , UK

2. Department of Statistics, London School of Economics and Political Sciences , London , UK

Abstract

Abstract We review the influential research carried out by Chris Skinner in the area of statistical disclosure control, and in particular quantifying the risk of re-identification in sample microdata from a random survey drawn from a finite population. We use the sample microdata to infer population parameters when the population is unknown, and estimate the risk of re-identification based on the notion of population uniqueness using probabilistic modelling. We also introduce a new approach to measure the risk of re-identification for a subpopulation in a register that is not representative of the general population, for example a register of cancer patients. In addition, we can use the additional information from the register to measure the risk of re-identification for the sample microdata. This new approach was developed by the two authors and is published here for the first time. We demonstrate this approach in an application study based on UK census data where we can compare the estimated risk measures to the known truth.

Funder

Engineering and Physical Sciences Research Council, Isaac Newton Institute for Mathematical Sciences

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Economics and Econometrics,Social Sciences (miscellaneous),Statistics and Probability

Reference25 articles.

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2. Bayesian nonparametric disclosure risk estimation via mixed effects log-linear models;Carota;Annals of Applied Statistics,2015

3. Doubly robust inference with non-probability survey samples;Chen;Journal of the American Statistical Association,2019

4. The risk of disclosure for microdata;Duncan;Journal of Business and Economic Statistics,1989

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