RIFLE: Robust Distillation-based FL for Deep Model Deployment on Resource-Constrained IoT Networks
Pouria Arefijamal, Mahdi Ahmadlou, Bardia Safaei, J\"org Henkel

TL;DR
RIFLE introduces a robust federated learning framework using knowledge distillation and trust validation to enable deep model deployment on resource-limited IoT devices, improving accuracy and security under non-IID data conditions.
Contribution
The paper presents RIFLE, a novel distillation-based federated learning approach that enhances robustness, privacy, and efficiency for deep models in resource-constrained IoT environments.
Findings
Reduces false positives by up to 87.5%
Improves poisoning attack mitigation by 62.5%
Achieves 28.3% higher accuracy within 10 rounds
Abstract
Federated learning (FL) is a decentralized learning paradigm widely adopted in resource-constrained Internet of Things (IoT) environments. These devices, typically relying on TinyML models, collaboratively train global models by sharing gradients with a central server while preserving data privacy. However, as data heterogeneity and task complexity increase, TinyML models often become insufficient to capture intricate patterns, especially under extreme non-IID (non-independent and identically distributed) conditions. Moreover, ensuring robustness against malicious clients and poisoned updates remains a major challenge. Accordingly, this paper introduces RIFLE - a Robust, distillation-based Federated Learning framework that replaces gradient sharing with logit-based knowledge transfer. By leveraging a knowledge distillation aggregation scheme, RIFLE enables the training of deep models…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · IoT and Edge/Fog Computing · Big Data and Digital Economy
