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Main Authors: Xu, ShiMao, Ke, Xiaopeng, Su, Xing, Li, Shucheng, Wu, Hao, Zhong, Sheng, Xu, Fengyuan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.19548
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author Xu, ShiMao
Ke, Xiaopeng
Su, Xing
Li, Shucheng
Wu, Hao
Zhong, Sheng
Xu, Fengyuan
author_facet Xu, ShiMao
Ke, Xiaopeng
Su, Xing
Li, Shucheng
Wu, Hao
Zhong, Sheng
Xu, Fengyuan
contents Federated Learning (FL) allows users to share knowledge instead of raw data to train a model with high accuracy. Unfortunately, during the training, users lose control over the knowledge shared, which causes serious data privacy issues. We hold that users are only willing and need to share the essential knowledge to the training task to obtain the FL model with high accuracy. However, existing efforts cannot help users minimize the shared knowledge according to the user intention in the FL training procedure. This work proposes FLiP, which aims to bring the principle of least privilege (PoLP) to FL training. The key design of FLiP is applying elaborate information reduction on the training data through a local-global dataset distillation design. We measure the privacy performance through attribute inference and membership inference attacks. Extensive experiments show that FLiP strikes a good balance between model accuracy and privacy protection.
format Preprint
id arxiv_https___arxiv_org_abs_2410_19548
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Privacy-Preserving Federated Learning via Dataset Distillation
Xu, ShiMao
Ke, Xiaopeng
Su, Xing
Li, Shucheng
Wu, Hao
Zhong, Sheng
Xu, Fengyuan
Machine Learning
Federated Learning (FL) allows users to share knowledge instead of raw data to train a model with high accuracy. Unfortunately, during the training, users lose control over the knowledge shared, which causes serious data privacy issues. We hold that users are only willing and need to share the essential knowledge to the training task to obtain the FL model with high accuracy. However, existing efforts cannot help users minimize the shared knowledge according to the user intention in the FL training procedure. This work proposes FLiP, which aims to bring the principle of least privilege (PoLP) to FL training. The key design of FLiP is applying elaborate information reduction on the training data through a local-global dataset distillation design. We measure the privacy performance through attribute inference and membership inference attacks. Extensive experiments show that FLiP strikes a good balance between model accuracy and privacy protection.
title Privacy-Preserving Federated Learning via Dataset Distillation
topic Machine Learning
url https://arxiv.org/abs/2410.19548