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Security and Privacy in Communication Networks. 16th EAI International Conference, SecureComm 2020, Washington, DC, USA, October 21-23, 2020, Proceedings, Part II

Research Article

Private Global Generator Aggregation from Different Types of Local Models

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  • @INPROCEEDINGS{10.1007/978-3-030-63095-9_21,
        author={Chunling Han and Rui Xue},
        title={Private Global Generator Aggregation from Different Types of Local Models},
        proceedings={Security and Privacy in Communication Networks. 16th EAI International Conference, SecureComm 2020, Washington, DC, USA, October 21-23, 2020, Proceedings, Part II},
        proceedings_a={SECURECOMM PART 2},
        year={2020},
        month={12},
        keywords={GAN Generator aggregation Discriminator loss},
        doi={10.1007/978-3-030-63095-9_21}
    }
    
  • Chunling Han
    Rui Xue
    Year: 2020
    Private Global Generator Aggregation from Different Types of Local Models
    SECURECOMM PART 2
    Springer
    DOI: 10.1007/978-3-030-63095-9_21
Chunling Han1,*, Rui Xue1
  • 1: SKLOIS, Institute of Information Engineering, CAS; School of Cyber Security
*Contact email: hanchunling@iie.ac.cn

Abstract

Generative Adversary Network (GAN) is a promising field with many practical applications. By using GANs, generated data can replace real sensitive data to be released for outside productive research. However, sometimes sensitive data is distributed among multiple parties, in which global generators are needed. Additionally, generated samples could remember or reflect sensitive features of real data. In this paper, we propose a scheme to aggregate a global generator from distributed local parties without access to local parties’ sensitive datasets, and the global generator will not reveal sensitive information of local parties’ training data. In our scheme, we separate GAN into two parts: discriminators played by local parties, a global generator played by the global party. Our scheme allows local parties to train different types of discriminators. To prevent generators from stealing sensitive information of real training datasets, we propose noised discriminator loss aggregation, add Gaussian noise to discriminators’ loss, then use the average of noised loss to compute global generator’s gradients and update its parameters. Our scheme is easy to implement by modifying plain GAN structures. We test our scheme on real-world MNIST and Fashion MNIST datasets, experimental results show that our scheme can achieve high-quality global generators without breaching local parties’ training data privacy.

Keywords
GAN Generator aggregation Discriminator loss
Published
2020-12-12
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-030-63095-9_21
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