LGAICRDCMar 5, 2024

FLGuard: Byzantine-Robust Federated Learning via Ensemble of Contrastive Models

arXiv:2403.02846v15 citationsh-index: 30Has CodeESORICS
Originality Incremental advance
AI Analysis

This addresses security vulnerabilities in federated learning systems, particularly for scenarios with non-IID data, though it is an incremental improvement over existing robust methods.

The paper tackles the problem of poisoning attacks in federated learning by proposing FLGuard, a method that detects and discards malicious client updates using an ensemble of contrastive models, resulting in outperforming state-of-the-art defenses, especially in non-IID settings.

Federated Learning (FL) thrives in training a global model with numerous clients by only sharing the parameters of their local models trained with their private training datasets. Therefore, without revealing the private dataset, the clients can obtain a deep learning (DL) model with high performance. However, recent research proposed poisoning attacks that cause a catastrophic loss in the accuracy of the global model when adversaries, posed as benign clients, are present in a group of clients. Therefore, recent studies suggested byzantine-robust FL methods that allow the server to train an accurate global model even with the adversaries present in the system. However, many existing methods require the knowledge of the number of malicious clients or the auxiliary (clean) dataset or the effectiveness reportedly decreased hugely when the private dataset was non-independently and identically distributed (non-IID). In this work, we propose FLGuard, a novel byzantine-robust FL method that detects malicious clients and discards malicious local updates by utilizing the contrastive learning technique, which showed a tremendous improvement as a self-supervised learning method. With contrastive models, we design FLGuard as an ensemble scheme to maximize the defensive capability. We evaluate FLGuard extensively under various poisoning attacks and compare the accuracy of the global model with existing byzantine-robust FL methods. FLGuard outperforms the state-of-the-art defense methods in most cases and shows drastic improvement, especially in non-IID settings. https://github.com/201younghanlee/FLGuard

Code Implementations1 repo
Foundations

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