Measuring Identification Risk in Microdata Release and Its Control by Post‐randomisation |
| |
Authors: | Tapan K. Nayak Cheng Zhang Jiashen You |
| |
Affiliation: | 1. Center for Disclosure Avoidance Research, US Census Bureau, Washington, DC, USA;2. Department of Statistics, George Washington University, Washington, DC, USA;3. Bureau of Transportation Statistics, US Department of Transportation, Washington, DC, USA |
| |
Abstract: | Statistical agencies often release a masked or perturbed version of survey data to protect the confidentiality of respondents' information. Ideally, a perturbation procedure should provide confidentiality protection without much loss of data quality, so that the released data may practically be treated as original data for making inferences. One major objective is to control the risk of correctly identifying any respondent's records in released data, by matching the values of some identifying or key variables. For categorical key variables, we propose a new approach to measuring identification risk and setting strict disclosure control goals. The general idea is to ensure that the probability of correctly identifying any respondent or surveyed unit is at most ξ, which is pre‐specified. Then, we develop an unbiased post‐randomisation procedure that achieves this goal for ξ>1/3. The procedure allows substantial control over possible changes to the original data, and the variance it induces is of a lower order of magnitude than sampling variance. We apply the procedure to a real data set, where it performs consistently with the theoretical results and quite importantly, shows very little data quality loss. |
| |
Keywords: | Correct match probability data partitioning data utility transition probability matrix unbiased post‐randomisation |
|
|