Semantic Scholar Open Access 2023 35 sitasi

FedGT: Identification of Malicious Clients in Federated Learning With Secure Aggregation

Marvin Xhemrishi Johan Östman A. Wachter-Zeh Alexandre Graell i Amat

Abstrak

Federated learning (FL) has emerged as a promising approach for collaboratively training machine learning models while preserving data privacy. Due to its decentralized nature, FL is vulnerable to poisoning attacks, where malicious clients compromise the global model through altered data or updates. Identifying such malicious clients is crucial for ensuring the integrity of FL systems. This task becomes particularly challenging under privacy-enhancing protocols such as secure aggregation, creating a fundamental trade-off between privacy and security. In this work, we propose FedGT, a novel framework designed to identify malicious clients in FL with secure aggregation while preserving privacy. Drawing inspiration from group testing, FedGT leverages overlapping groups of clients to identify the presence of malicious clients via a decoding operation. The clients identified as malicious are then removed from the model training, which is performed over the remaining clients. By choosing the size, number, and overlap between groups, FedGT strikes a balance between privacy and security. Specifically, the server learns the aggregated model of the clients in each group—vanilla federated learning and secure aggregation correspond to the extreme cases of FedGT with group size equal to one and the total number of clients, respectively. The effectiveness of FedGT is demonstrated through extensive experiments on three datasets in a cross-silo setting under different data-poisoning attacks. These experiments showcase FedGT’s ability to identify malicious clients, resulting in high model utility. We further show that FedGT significantly outperforms the private robust aggregation approach based on the geometric median recently proposed by Pillutla et al. and the robust aggregation technique Multi-Krum in multiple settings.

Penulis (4)

M

Marvin Xhemrishi

J

Johan Östman

A

A. Wachter-Zeh

A

Alexandre Graell i Amat

Format Sitasi

Xhemrishi, M., Östman, J., Wachter-Zeh, A., Amat, A.G.i. (2023). FedGT: Identification of Malicious Clients in Federated Learning With Secure Aggregation. https://doi.org/10.1109/TIFS.2025.3539964

Akses Cepat

Lihat di Sumber doi.org/10.1109/TIFS.2025.3539964
Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
Total Sitasi
35×
Sumber Database
Semantic Scholar
DOI
10.1109/TIFS.2025.3539964
Akses
Open Access ✓