A Hybrid Reinforcement Learning-Based Trust Model for 5G Networks

Ahmad, I., Yau, K.-L. A. and Keoh, S. L. (2020) A Hybrid Reinforcement Learning-Based Trust Model for 5G Networks. In: 2020 IEEE Conference on Applications, Information and Network Security (AINS), 17-19 Nov 2020, pp. 20-25. ISBN 9781728192406 (doi: 10.1109/AINS50155.2020.9315132)

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Abstract

Trust investigation in 5G, which is the next-generation wireless network, is still at its infancy. This research proposes a hybrid trust model for the selection of a legitimate (or trusted) forwarding (relay) entity and to countermeasure intelligent attacks against a route selection scheme. The hybrid trust model has a centralized entity (i.e., a centralized controller C c ) that provides the security level of the operating environment to network entities, and distributed entities that identify malicious or legitimate entities in the network. When the security level of the operating environment is high (low), the distributed entities learn more (lesser) from their respective operating environment. While legitimate entities can use artificial intelligence, such as reinforcement learning (RL), to enhance their trust models, the malicious entities can also use artificial intelligence to increase the detrimental effects of their attacks and minimize their likelihood of being detected. Our proposed trust model is feasible with the introduction of artificial intelligence and the central controller (C c ) in 5G to support the hybrid trust model. We have explained in detail our proposed model that reinforcement learning based hybridization of trust model can enhance the performance of the network interms of learning and tackling intelligent attacks, whereby achieving context awareness and detection of malicious entities.

Item Type:Conference Proceedings
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Keoh, Dr Sye Loong
Authors: Ahmad, I., Yau, K.-L. A., and Keoh, S. L.
College/School:College of Science and Engineering > School of Computing Science
ISBN:9781728192406
Published Online:13 January 2021
Copyright Holders:Copyright © 2020 IEEE
First Published:First published in 2020 IEEE Conference on Applications, Information and Network Security (AINS): 20-25
Publisher Policy:Reproduced in accordance with the publisher copyright policy
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