TY - JOUR
T1 - Privacy-Preserving Heterogeneous Personalized Federated Learning With Knowledge
AU - Pan, Yanghe
AU - Su, Zhou
AU - Ni, Jianbing
AU - Wang, Yuntao
AU - Zhou, Jinhao
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Personalized federated learning (PFL) has gained increasing attention due to its success in handling the statistical heterogeneity of participants' local data by building distinct local models for participants. However, existing PFL schemes require the identical architecture and size of participants' models, e.g., the same number of layers in convolutional neural networks (CNN). In addition, the growing privacy issues (e.g., local update leakage to the curious server in model aggregation) have not been resolved in PFL. The utilization of identical model architectures among participants reduces the cost of privacy attacks since only one uniform attack method is required to extract private information, exacerbating the privacy threat. This paper proposes a novel privacy-preserving PFL framework that supports heterogeneous model architectures and sizes in delivering personalized models for different participants. Specifically, we utilize participants' knowledge, i.e., the soft predictions of local models on a public dataset, to effectively identify participants with similar data distributions regardless of the specific model architectures used. Based on the participants' knowledge, and their computing and storage capabilities, we employ the affinity propagation (AP) algorithm to implement a multi-level participant clustering mechanism for enabling heterogeneous PFL. Since knowledge is independent of original data, it is considered privacy-preserving during the clustering process. We also devise the ring aggregation algorithm to guarantee participants' privacy during the federated training process. In this way, each participant benefits from other participants with similar data distributions privately and obtains a satisfying personalized model. Furthermore, the cross-cluster knowledge transfer method boosts the personalization performance of weak participants. Sufficient theoretical analyses prove the effectiveness and privacy-preserving capacity of the proposed scheme. Extensive experiments on three benchmark datasets also demonstrate the superiority of our proposed scheme in various settings while maintaining privacy protection, outperforming other state-of-the-art schemes.
AB - Personalized federated learning (PFL) has gained increasing attention due to its success in handling the statistical heterogeneity of participants' local data by building distinct local models for participants. However, existing PFL schemes require the identical architecture and size of participants' models, e.g., the same number of layers in convolutional neural networks (CNN). In addition, the growing privacy issues (e.g., local update leakage to the curious server in model aggregation) have not been resolved in PFL. The utilization of identical model architectures among participants reduces the cost of privacy attacks since only one uniform attack method is required to extract private information, exacerbating the privacy threat. This paper proposes a novel privacy-preserving PFL framework that supports heterogeneous model architectures and sizes in delivering personalized models for different participants. Specifically, we utilize participants' knowledge, i.e., the soft predictions of local models on a public dataset, to effectively identify participants with similar data distributions regardless of the specific model architectures used. Based on the participants' knowledge, and their computing and storage capabilities, we employ the affinity propagation (AP) algorithm to implement a multi-level participant clustering mechanism for enabling heterogeneous PFL. Since knowledge is independent of original data, it is considered privacy-preserving during the clustering process. We also devise the ring aggregation algorithm to guarantee participants' privacy during the federated training process. In this way, each participant benefits from other participants with similar data distributions privately and obtains a satisfying personalized model. Furthermore, the cross-cluster knowledge transfer method boosts the personalization performance of weak participants. Sufficient theoretical analyses prove the effectiveness and privacy-preserving capacity of the proposed scheme. Extensive experiments on three benchmark datasets also demonstrate the superiority of our proposed scheme in various settings while maintaining privacy protection, outperforming other state-of-the-art schemes.
KW - Federated learning
KW - heterogeneity
KW - knowledge
KW - personalization
UR - https://www.scopus.com/pages/publications/85190722419
U2 - 10.1109/TNSE.2024.3386623
DO - 10.1109/TNSE.2024.3386623
M3 - 文章
AN - SCOPUS:85190722419
SN - 2327-4697
VL - 11
SP - 5969
EP - 5982
JO - IEEE Transactions on Network Science and Engineering
JF - IEEE Transactions on Network Science and Engineering
IS - 6
ER -