TY - GEN
T1 - ALGANs: Enhancing membership inference attacks in federated learning with GANs and active learning
AU - Xie, Yuanyuan
AU - Chen, Bing
AU - Zhang, Jiale
AU - Li, Wenjuan
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022/11
Y1 - 2022/11
N2 - Federated learning has received a lot of attention in recent years due to its privacy protection features. However, federated learning is susceptible to various inference attacks. Membership inference attack aims to determine whether the target data is a member or non-member of the target federated learning model, which poses a serious threat to the privacy of the training data set. Membership inference method in federated learning is dissatisfied due to a lack of attack data. Recent work shows that generative adversarial networks(GANs) can effectively enrich attack data. However, data generated by GANs lacks labels. Previous work labels data by inputting it to the target classifier model, which may be imprecise when the target model outputs ambiguous results. In this paper, to overcome the lack of attack data and the lack of labels for GANs, we propose ALGANs. ALGANs increases data diversity using GANs while applies active learning to label data generated by GANs. Membership inference attack enhanced by ALGANs has a high attack accuracy due to applying active learning to label data and extensive experimental results prove our point. We performed experiments to show that ALGAN makes membership inference attacks more threatening in federated learning.
AB - Federated learning has received a lot of attention in recent years due to its privacy protection features. However, federated learning is susceptible to various inference attacks. Membership inference attack aims to determine whether the target data is a member or non-member of the target federated learning model, which poses a serious threat to the privacy of the training data set. Membership inference method in federated learning is dissatisfied due to a lack of attack data. Recent work shows that generative adversarial networks(GANs) can effectively enrich attack data. However, data generated by GANs lacks labels. Previous work labels data by inputting it to the target classifier model, which may be imprecise when the target model outputs ambiguous results. In this paper, to overcome the lack of attack data and the lack of labels for GANs, we propose ALGANs. ALGANs increases data diversity using GANs while applies active learning to label data generated by GANs. Membership inference attack enhanced by ALGANs has a high attack accuracy due to applying active learning to label data and extensive experimental results prove our point. We performed experiments to show that ALGAN makes membership inference attacks more threatening in federated learning.
KW - Active learning
KW - Federated learning
KW - Generative Adversarial Networks
KW - Membership inference attacks
UR - http://www.scopus.com/inward/record.url?scp=85145440685&partnerID=8YFLogxK
U2 - 10.1109/ISPCE-ASIA57917.2022.9971068
DO - 10.1109/ISPCE-ASIA57917.2022.9971068
M3 - Conference article published in proceeding or book
AN - SCOPUS:85145440685
T3 - ISPCE-ASIA 2022 - IEEE International Symposium on Product Compliance Engineering - Asia 2022
SP - 1
EP - 6
BT - ISPCE-ASIA 2022 - IEEE International Symposium on Product Compliance Engineering - Asia 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2022 IEEE International Symposium on Product Compliance Engineering - Asia, ISPCE-ASIA 2022
Y2 - 4 November 2022 through 6 November 2022
ER -