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Generating partially synthetic geocoded public use data with decreased disclosure risk by using differential smoothing

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  • Harrison Quick
  • Scott H. Holan
  • Christopher K. Wikle

Abstract

When collecting geocoded confidential data with the intent to disseminate, agencies often resort to altering the geographies before making data publicly available. An alternative to releasing aggregated and/or perturbed data is to release synthetic data, where sensitive values are replaced with draws from models designed to capture distributional features in the data collected. The issues associated with spatially outlying observations in the data, however, have received relatively little attention. Our goal here is to shed light on this problem, to propose a solution—referred to as ‘differential smoothing’—and to illustrate our approach by using sale prices of homes in San Francisco.

Suggested Citation

  • Harrison Quick & Scott H. Holan & Christopher K. Wikle, 2018. "Generating partially synthetic geocoded public use data with decreased disclosure risk by using differential smoothing," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 181(3), pages 649-661, June.
  • Handle: RePEc:bla:jorssa:v:181:y:2018:i:3:p:649-661
    DOI: 10.1111/rssa.12360
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    References listed on IDEAS

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    1. Banerjee, Sudipto & Finley, Andrew O. & Waldmann, Patrik & Ericsson, Tore, 2010. "Hierarchical Spatial Process Models for Multiple Traits in Large Genetic Trials," Journal of the American Statistical Association, American Statistical Association, vol. 105(490), pages 506-521.
    2. Zhou, Xiang & Reiter, Jerome P., 2010. "A Note on Bayesian Inference After Multiple Imputation," The American Statistician, American Statistical Association, vol. 64(2), pages 159-163.
    3. Jerome P. Reiter, 2005. "Releasing multiply imputed, synthetic public use microdata: an illustration and empirical study," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 168(1), pages 185-205, January.
    4. Jonathan R. Bradley & Christopher K. Wikle & Scott H. Holan, 2017. "Regionalization of multiscale spatial processes by using a criterion for spatial aggregation error," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 79(3), pages 815-832, June.
    5. Di An & Roderick J. A. Little, 2007. "Multiple imputation: an alternative to top coding for statistical disclosure control," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 170(4), pages 923-940, October.
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    Cited by:

    1. Daniel H. Weinberg & John M. Abowd & Robert F. Belli & Noel Cressie & David C. Folch & Scott H. Holan & Margaret C. Levenstein & Kristen M. Olson & Jerome P. Reiter & Matthew D. Shapiro & Jolene Smyth, 2017. "Effects of a Government-Academic Partnership: Has the NSF-Census Bureau Research Network Helped Improve the U.S. Statistical System?," Working Papers 17-59r, Center for Economic Studies, U.S. Census Bureau.
    2. Harrison Quick, 2021. "Generating Poisson‐distributed differentially private synthetic data," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 184(3), pages 1093-1108, July.

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