TY - GEN
T1 - Minimax Data Sanitization with Distortion Constraint and Adversarial Inference
AU - Moatazedian, Amirarsalan
AU - Yakimenka, Yauhen
AU - Chou, Rémi A.
AU - Kliewer, Jörg
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - We study a privacy-preserving data-sharing setting where a privatizer transforms private data into a sanitized version observed by an authorized reconstructor and two unauthorized adversaries, each with access to side information correlated with the private data.The reconstructor is evaluated under a distortion function, while each adversary is evaluated using a separate loss function. The privatizer ensures the reconstructor distortion remains below a fixed threshold while maximizing the minimum loss across the two adversaries. This two-adversary setting models cases where individual users cannot reconstruct the data accurately, but their combined side information enables estimation within the distortion threshold. The privatizer maximizes individual loss while permitting accurate reconstruction only through collaboration. This echoes secret-sharing principles, but with lossy rather than perfect recovery. We frame this as a constrained data-driven minimax optimization problem and propose a data-driven training procedure that alternately updates the privatizer, reconstructor, and adversaries. We also analyze the Gaussian and binary cases as special scenarios where optimal solutions can be obtained. These theoretical optimal results are benchmarks for evaluating the proposed minimax training approach.
AB - We study a privacy-preserving data-sharing setting where a privatizer transforms private data into a sanitized version observed by an authorized reconstructor and two unauthorized adversaries, each with access to side information correlated with the private data.The reconstructor is evaluated under a distortion function, while each adversary is evaluated using a separate loss function. The privatizer ensures the reconstructor distortion remains below a fixed threshold while maximizing the minimum loss across the two adversaries. This two-adversary setting models cases where individual users cannot reconstruct the data accurately, but their combined side information enables estimation within the distortion threshold. The privatizer maximizes individual loss while permitting accurate reconstruction only through collaboration. This echoes secret-sharing principles, but with lossy rather than perfect recovery. We frame this as a constrained data-driven minimax optimization problem and propose a data-driven training procedure that alternately updates the privatizer, reconstructor, and adversaries. We also analyze the Gaussian and binary cases as special scenarios where optimal solutions can be obtained. These theoretical optimal results are benchmarks for evaluating the proposed minimax training approach.
UR - https://www.scopus.com/pages/publications/105029021721
UR - https://www.scopus.com/pages/publications/105029021721#tab=citedBy
U2 - 10.1109/ITW62417.2025.11240365
DO - 10.1109/ITW62417.2025.11240365
M3 - Conference contribution
AN - SCOPUS:105029021721
T3 - 2025 IEEE Information Theory Workshop, ITW 2025
BT - 2025 IEEE Information Theory Workshop, ITW 2025
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2025 IEEE Information Theory Workshop, ITW 2025
Y2 - 29 September 2025 through 3 October 2025
ER -