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Abstract
Differential privacy has become a popular privacy-preserving method in data
analysis, query processing, and machine learning, which adds noise to the query
result to avoid leaking privacy. Sensitivity, or the maximum impact of deleting
or inserting a tuple on query results, determines the amount of noise added.
Computing the sensitivity of some simple queries such as counting query is
easy, however, computing the sensitivity of complex queries containing join
operations is challenging. Global sensitivity of such a query is unboundedly
large, which corrupts the accuracy of the query answer. Elastic sensitivity and
residual sensitivity offer upper bounds of local sensitivity to reduce the
noise, but they suffer from either low accuracy or high computational overhead.
We propose two fast query sensitivity estimation methods based on sampling and
sketch respectively, offering competitive accuracy and higher efficiency
compared to the state-of-the-art methods.
External Datasets
TPC-H
Facebook ego-network
References
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Towards practical differential privacy for sql queries
N. M. Johnson, J. P. Near, D. X. Song
Published: 2017
Proceedings of the 2021 International Conference on Management of Data
Residual sensitivity for differentially private multi-way joins
W. Dong, K. Yi
Published: 2021
Encyclopedia of Cryptography and Security
Differential privacy
C. Dwork
Published: 2006
International Conference on Machine Learning
Differentially private query release through adaptive projection
S. Ayd¨ore, W. Brown, M. Kearns, K. Kenthapadi, L. Melis, A. Roth, A. Siva
Published: 2021
Proceedings of the 2021 ACM SIGSAC Conference on Computer and Communications Security
Continuous release of data streams under both centralized and local differential privacy
T. Wang, J. Q. Chen, Z. Zhang, D. Su, Y. Cheng, Z. Li, N. Li, S. Jha
Published: 2020
IEEE Transactions on Dependable and Secure Computing
Precision-enhanced differentially-private mining of high-confidence association rules