A Deep Contextual Bandit-Based End-to-End Slice Provisioning Approach for Efficient Allocation of 5G Network Resources

Dayot, Ralph Voltaire J. and Ra, In-Ho and Kim, Hyung-Jin (2022) A Deep Contextual Bandit-Based End-to-End Slice Provisioning Approach for Efficient Allocation of 5G Network Resources. Network, 2 (3). pp. 370-388. ISSN 2673-8732

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Abstract

5G networks have been experiencing challenges in handling the heterogeneity and influx of user requests brought upon by the constant emergence of various services. As such, network slicing is considered one of the critical technologies for improving the performance of 5G networks. This technology has shown great potential for enhancing network scalability and dynamic service provisioning through the effective allocation of network resources. This paper presents a Deep Reinforcement Learning-based network slicing scheme to improve resource allocation in 5G networks. First, a Contextual Bandit model for the network slicing process is created, and then a Deep Reinforcement Learning-based network slicing agent (NSA) is developed. The agent’s goal is to maximize every action’s reward by considering the current network state and resource utilization. Additionally, we utilize network theory concepts and methods for node selection, ranking, and mapping. Extensive simulation has been performed to show that the proposed scheme can achieve higher action rewards, resource efficiency, and network throughput compared to other algorithms.

Item Type: Article
Subjects: Eprints AP open Archive > Computer Science
Depositing User: Unnamed user with email admin@eprints.apopenarchive.com
Date Deposited: 12 Jun 2023 07:09
Last Modified: 22 Jan 2024 04:53
URI: http://asian.go4sending.com/id/eprint/658

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