Authors

* External authors

Venue

Date

Share

Exploit Gradient Skewness to Circumvent Byzantine Defenses for Federated Learning

Yuchen Liu*

Chen Chen

Lingjuan Lyu

Yaochu Jin

Gang Chen*

* External authors

AAAI-25

2025

Abstract

Federated Learning (FL) is notorious for its vulnerability to Byzantine attacks. Most current Byzantine defenses share a common inductive bias: among all the gradients, the densely distributed ones are more likely to be honest. However, such a bias is a poison to Byzantine robustness due to a newly discovered phenomenon in this paper -- gradient skew. We discover that a group of densely distributed honest gradients skew away from the optimal gradient (the average of honest gradients) due to heterogeneous data. This gradient skew phenomenon allows Byzantine gradients to hide within the densely distributed skewed gradients. As a result, Byzantine defenses are confused into believing that Byzantine gradients are honest. Motivated by this observation, we propose a novel skew-aware attack called STRIKE: first, we search for the skewed gradients; then, we construct Byzantine gradients within the skewed gradients. Experiments on three benchmark datasets validate the effectiveness of our attack.

Related Publications

Self-Comparison for Dataset-Level Membership Inference in Large (Vision-)Language Model

WWW, 2025
Jie Ren, Kangrui Chen, Chen Chen, Vikash Sehwag, Yue Xing, Jiliang Tang, Lingjuan Lyu

Large Language Models (LLMs) and Vision-Language Models (VLMs) have made significant advancements in a wide range of natural language processing and vision-language tasks. Access to large web-scale datasets has been a key factor in their success. However, concerns have been …

FLoRA: Federated Fine-Tuning Large Language Models with Heterogeneous Low- Rank Adaptations

NeurIPS, 2024
Lingjuan Lyu, Ziyao Wang, Zheyu Shen, Yexiao He, Guoheng Sun, Hongyi Wang, Ang Li

The rapid development of Large Language Models (LLMs) has been pivotal in advancing AI, with pre-trained LLMs being adaptable to diverse downstream tasks through fine-tuning. Federated learning (FL) further enhances fine-tuning in a privacy-aware manner by utilizing clients'…

pFedClub: Controllable Heterogeneous Model Aggregation for Personalized Federated Learning

NeurIPS, 2024
Jiaqi Wang*, Lingjuan Lyu, Fenglong Ma*, Qi Li

Federated learning, a pioneering paradigm, enables collaborative model training without exposing users’ data to central servers. Most existing federated learning systems necessitate uniform model structures across all clients, restricting their practicality. Several methods …

  • HOME
  • Publications
  • Exploit Gradient Skewness to Circumvent Byzantine Defenses for Federated Learning

JOIN US

Shape the Future of AI with Sony AI

We want to hear from those of you who have a strong desire
to shape the future of AI.