TY - GEN
T1 - Formal privacy for functional data with Gaussian perturbations
AU - Mirshani, Ardalan
AU - Reimherr, Matthew
AU - Slavkovic, Aleksandra
N1 - Funding Information:
This research was supported in part by the following grants to the Pennsylvania State University: NSF Grant SES-1534433, NSF Grant DMS-1712826, and NIH ULI TR002014. Part of this work was done while the second and third authors were visiting the Simons Institute for the Theory of Computing.
Publisher Copyright:
© 2019 by the author(s).
PY - 2019
Y1 - 2019
N2 - Motivated by the rapid rise in statistical tools in Functional Data Analysis, we consider the Gaussian mechanism for achieving differential privacy (DP) with parameter estimates taking values in a, potentially infinite-dimensional, separable Ba-nach space. Using classic results from probability theory, we show how densities over function spaces can be utilized to achieve the desired DP bounds. This extends prior results of Hall et al. (2013) to a much broader class of statistical estimates and summaries, including "path level" summaries, nonlinear functionals, and full function releases. By focusing on Banach spaces, we provide a deeper picture of the challenges for privacy with complex data, especially the role regularization plays in balancing utility and privacy. Using an application to penalized smoothing, we highlight this balance in the context of mean function estimation. Simulations and an application to diffusion tensor imaging are briefly presented, with extensive additions included in a supplement.
AB - Motivated by the rapid rise in statistical tools in Functional Data Analysis, we consider the Gaussian mechanism for achieving differential privacy (DP) with parameter estimates taking values in a, potentially infinite-dimensional, separable Ba-nach space. Using classic results from probability theory, we show how densities over function spaces can be utilized to achieve the desired DP bounds. This extends prior results of Hall et al. (2013) to a much broader class of statistical estimates and summaries, including "path level" summaries, nonlinear functionals, and full function releases. By focusing on Banach spaces, we provide a deeper picture of the challenges for privacy with complex data, especially the role regularization plays in balancing utility and privacy. Using an application to penalized smoothing, we highlight this balance in the context of mean function estimation. Simulations and an application to diffusion tensor imaging are briefly presented, with extensive additions included in a supplement.
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M3 - Conference contribution
AN - SCOPUS:85077967089
T3 - 36th International Conference on Machine Learning, ICML 2019
SP - 8082
EP - 8091
BT - 36th International Conference on Machine Learning, ICML 2019
PB - International Machine Learning Society (IMLS)
T2 - 36th International Conference on Machine Learning, ICML 2019
Y2 - 9 June 2019 through 15 June 2019
ER -