GAN-DP: generative adversarial net driven differentially privacy-preserving big data publishing
Version 2 2024-06-06, 00:31Version 2 2024-06-06, 00:31
Version 1 2019-08-22, 08:21Version 1 2019-08-22, 08:21
conference contribution
posted on 2024-06-06, 00:31 authored by Y Qu, S Yu, J Zhang, HTT Binh, Longxiang Gao, W Zhou© 2019 IEEE. Increasing massive volume of data are generated every single second in this big data era. With big data from multiple sources, adversaries continuously mine private information for potential benefits. Motivated by this, we propose a generative adversarial net (GAN) driven noise generation method under the framework of differential privacy. We add one more perceptron, which is a specifically devised differential privacy identifier. After the generator produces the noise, the discriminator and the proposed identifier game with each other to derive the Nash Equilibrium. Extensive experimental results demonstrate the proposed model meets differential privacy constraints and upgrade data utility simultaneously.
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Shanghai, ChinaPublisher DOI
Start date
2019-05-20End date
2019-05-24ISSN
1550-3607ISBN-13
9781538680889Language
engPublication classification
E1 Full written paper - refereedCopyright notice
2019, IEEETitle of proceedings
ICC 2019 : Proceedings of the 2019 IEEE International Conference on CommunicationsEvent
Communications. International Conference ( 2019 : Shanghai, China)Publisher
IEEEPlace of publication
Piscataway, N.J.Usage metrics
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