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  4. PlugVFL: Robust and IP-Protecting Vertical Federated Learning against Unexpected Quitting of Parties
 
conference paper

PlugVFL: Robust and IP-Protecting Vertical Federated Learning against Unexpected Quitting of Parties

Sun, Jingwei
•
Du, Zhixu
•
Dai, Anna
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Ding, Wei
•
Lu, Chang-Tien
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2024
Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
IEEE International Conference on Big Data

In federated learning systems, the unexpected quitting of participants is inevitable. Such quittings generally do not incur serious consequences in horizontal federated learning (HFL), but they do damage to vertical federated learning (VFL), which has been underexplored in previous research. In this paper, we show that there are two major vulnerabilities when passive parties unexpectedly quit in the deployment phase of VFL - severe performance degradation and intellectual property (IP) leakage of the active party's labels. To solve these issues, we design PlugVFL to improve the VFL model's robustness against the unexpected exit of passive parties and protect the active party's IP in the deployment phase simultaneously. We evaluate our framework on multiple datasets against different inference attacks. The results show that PlugVFL effectively maintains model performance after the passive party quits and successfully disguises label information from the passive party's feature extractor, thereby mitigating IP leakage.

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Type
conference paper
DOI
10.1109/BigData62323.2024.10825534
Scopus ID

2-s2.0-85218007886

Author(s)
Sun, Jingwei

Duke University

Du, Zhixu

Duke University

Dai, Anna

Duke University

Baghersalimi, Saleh  

École Polytechnique Fédérale de Lausanne

Amirshahi, Alireza  

EPFL

Atienza Alonso, David  

EPFL

Chen, Yiran

Duke University

Editors
Ding, Wei
•
Lu, Chang-Tien
•
Wang, Fusheng
•
Di, Liping
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Wu, Kesheng
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Huan, Jun
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Nambiar, Raghu
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Li, Jundong
•
Ilievski, Filip
•
Baeza-Yates, Ricardo
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Date Issued

2024

Publisher

Institute of Electrical and Electronics Engineers Inc.

Published in
Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
DOI of the book
10.1109/BigData62323.2024
ISBN of the book

9798350362480

Start page

1124

End page

1133

Subjects

Data Privacy

•

Federated Learning

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IP Protection

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ESL  
Event nameEvent acronymEvent placeEvent date
IEEE International Conference on Big Data

Washington, United States

2024-12-15 - 2024-12-18

Available on Infoscience
February 26, 2025
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/247249
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