TL;DR
This paper introduces a hierarchical deep reinforcement learning method for joint admission control and resource allocation in virtual network embedding, effectively improving acceptance ratios and revenue by exploiting network features.
Contribution
It proposes a novel HRL-based approach that decomposes VNE into admission and resource allocation policies using deep neural networks and graph features.
Findings
Outperforms state-of-the-art baselines in acceptance ratio
Achieves higher long-term average revenue
Effectively captures network features with deep learning
Abstract
As an essential resource management problem in network virtualization, virtual network embedding (VNE) aims to allocate the finite resources of physical network to sequentially arriving virtual network requests (VNRs) with different resource demands. Since this is an NP-hard combinatorial optimization problem, many efforts have been made to provide viable solutions. However, most existing approaches have either ignored the admission control of VNRs, which has a potential impact on long-term performances, or not fully exploited the temporal and topological features of the physical network and VNRs. In this paper, we propose a deep Hierarchical Reinforcement Learning approach to learn a joint Admission Control and Resource Allocation policy for VNE, named HRL-ACRA. Specifically, the whole VNE process is decomposed into an upper-level policy for deciding whether to admit the arriving VNR…
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Taxonomy
MethodsGraph Neural Network
