Security-Aware Virtual Network Embedding Algorithm based on Reinforcement Learning
Peiying Zhang, Chao Wang, Chunxiao Jiang, and Abderrahim Benslimane

TL;DR
This paper introduces a reinforcement learning-based security-aware virtual network embedding algorithm that improves acceptance rates and resource efficiency by considering security constraints.
Contribution
It proposes a novel RL-based VNE algorithm incorporating security level constraints, addressing security issues and surpassing traditional heuristic methods.
Findings
Outperforms traditional algorithms in acceptance rate.
Enhances long-term revenue and resource utilization.
Effectively incorporates security constraints into VNE.
Abstract
Virtual network embedding (VNE) algorithm is always the key problem in network virtualization (NV) technology. At present, the research in this field still has the following problems. The traditional way to solve VNE problem is to use heuristic algorithm. However, this method relies on manual embedding rules, which does not accord with the actual situation of VNE. In addition, as the use of intelligent learning algorithm to solve the problem of VNE has become a trend, this method is gradually outdated. At the same time, there are some security problems in VNE. However, there is no intelligent algorithm to solve the security problem of VNE. For this reason, this paper proposes a security-aware VNE algorithm based on reinforcement learning (RL). In the training phase, we use a policy network as a learning agent and take the extracted attributes of the substrate nodes to form a feature…
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Taxonomy
TopicsSoftware-Defined Networks and 5G
