Anonymiced Shareable Data: Using mice to Create and Analyze Multiply Imputed Synthetic Datasets

Publication date

2021-11-23

Authors

Volker, Thom BenjaminISNI 0000000512654009
Vink, GerkoORCID 0000-0001-9767-1924ISNI 0000000394871968

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by

Abstract

Synthetic datasets simultaneously allow for the dissemination of research data while protecting the privacy and confidentiality of respondents. Generating and analyzing synthetic datasets is straightforward, yet, a synthetic data analysis pipeline is seldom adopted by applied researchers. We outline a simple procedure for generating and analyzing synthetic datasets with the multiple imputation software mice (Version 3.13.15) in R. We demonstrate through simulations that the analysis results obtained on synthetic data yield unbiased and valid inferences and lead to synthetic records that cannot be distinguished from the true data records. The ease of use when synthesizing data with mice along with the validity of inferences obtained through this procedure opens up a wealth of possibilities for data dissemination and further research on initially private data

Keywords

mice, multiple imputation, synthetic data, statistical disclosure control, privacy

Citation

Volker, T B & Vink, G 2021, 'Anonymiced Shareable Data: Using mice to Create and Analyze Multiply Imputed Synthetic Datasets', Psych, vol. 3, no. 4, pp. 703-716. https://doi.org/10.3390/psych3040045