2020
DOI: 10.1002/cpe.6020
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Modeling on virtual network embedding using reinforcement learning

Abstract: It is well known that virtual network (VN) embedding (VNE) aims to solve how to efficiently allocate physical resources to a VN. However, this issue has been proved to be an NP-hard problem. Besides, as most of the existing approaches are based on heuristic algorithms, which is easy to fall into local optimal. To address the challenge, we formalize the problem as a mixed integer programming problem and propose a novel VNE method based on reinforcement learning in this article. And to solve the problem, we intr… Show more

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Cited by 10 publications
(9 citation statements)
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“…In [29], the authors propose an RL-based VNE algorithm using a pointer network model [43]. The algorithm employs the attention mechanism to focus on a specific substrate node, and the pointer network model comprises an encoderdecoder that takes the substrate node's features as input.…”
Section: B Reinforcement Learning Algorithms For Vnementioning
confidence: 99%
“…In [29], the authors propose an RL-based VNE algorithm using a pointer network model [43]. The algorithm employs the attention mechanism to focus on a specific substrate node, and the pointer network model comprises an encoderdecoder that takes the substrate node's features as input.…”
Section: B Reinforcement Learning Algorithms For Vnementioning
confidence: 99%
“…The features of the SNs and VNs construct the processes image. Wang et al [26] proposed a RL model, called PNVNE (Pointer Network VNE), for solving VNE problems, which utilizes an attention mechanism that selects the most suitable substrate nodes, hence, the model can focus on them. Troia et al [27] proposed an Advantage Actor-Critic RL (A2CRL) model for mapping slice requests in a 5G network on the SNs, as a special form of VNE problems.…”
Section: Related Workmentioning
confidence: 99%
“…Then, we have compared the performance of SIRL against nine of the existing RL models, which are CDRL [17], RDAM [18], VNEQS [20], MLRL [21], DRLVNE [22], GCNNRL [23], A3CGCN [24], DeepViNE [25], PNVNE [26], and A2CRL [27]. Since our focus is on the features and their ability to model the environment, we have considered the same reward function for all the simulated models to remove the impact of the rewards on the model's performance.…”
Section: Time Complexitymentioning
confidence: 99%
“…The network performance can be recovered faster by means of backup, but the backup will occupy more resources and increase the mapping cost. In [18,19], the author quantifies the failure of the underlying equipment as a reliability evaluation index, and proposes a slice mapping algorithm for different business types, which not only ensures the reliability of slices, but also meets the diversified needs of the business. In [20], the author comprehensively considers the underlying topology, reliability evaluation of a single node and the reliability evaluation of the adjacent environment of the node as the reliability indicators of the node.…”
Section: Introductionmentioning
confidence: 99%