Multi-Domain Virtual Network Embedding Algorithm based on Horizontal Federated Learning
Peiying Zhang, Ning Chen, Shibao Li, Kim-Kwang Raymond Choo, Chunxiao, Jiang

TL;DR
This paper introduces a novel multi-domain virtual network embedding algorithm using horizontal federated learning, enhancing privacy, efficiency, and dynamic resource allocation in complex physical networks.
Contribution
It is the first to apply horizontal federated learning to model virtual network embedding, integrating deep reinforcement learning for dynamic optimization across multiple domains.
Findings
HFL-VNE improves resource utilization and privacy.
Simulation results outperform existing methods.
Dynamic adjustment via DRL enhances network performance.
Abstract
Network Virtualization (NV) is an emerging network dynamic planning technique to overcome network rigidity. As its necessary challenge, Virtual Network Embedding (VNE) enhances the scalability and flexibility of the network by decoupling the resources and services of the underlying physical network. For the future multi-domain physical network modeling with the characteristics of dynamics, heterogeneity, privacy, and real-time, the existing related works perform satisfactorily. Federated learning (FL) jointly optimizes the network by sharing parameters among multiple parties and is widely employed in disputes over data privacy and data silos. Aiming at the NV challenge of multi-domain physical networks, this work is the first to propose using FL to model VNE, and presents a VNE architecture based on Horizontal Federated Learning (HFL) (HFL-VNE). Specifically, combined with the…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Spinal Cord Injury Research · Perovskite Materials and Applications
