Deep Reinforcement Learning based Intrusion Detection System with Feature Selections Method and Optimal Hyper-parameter in IoT Environment

Said Bakhshad, V. Ponnusamy, R. Annur, Muhammad Waqas, Hisham Alasmary, Shanshan Tu
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引用次数: 5

Abstract

The continuous rise of inter-contented Internet of Things (IoT) devices has significantly increased network traffic, complexity, and the ever-changing Internet environment, making them more vulnerable to security attacks. Therefore, a robust and elegant intrusion detection system (IDS) based on advanced machine learning methods is required for securing the IoT environment. This paper discusses the new deep reinforcement learning (DRL) based network intrusion detection system (NIDS) with feature selection methods. However, the structure and training of the DRL model are still challenging tasks. Moreover, the effectiveness and accuracy of DRL-IDS crucially depend on the suitable hyper-parameters adaptation, i.e., differing hyperparameters can result in markedly varied IDS performance. Furthermore, due to the commercial value of hyper-parameters, confidentiality may be deemed necessary, and proprietary algorithms may protect their exclusive use. Therefore, we find different optimal hyper-parameters values for the training of DRL agents. Furthermore, we evaluate the effectiveness of different hyper-parameters both theoretically and empirically. For instance, we assess the hyper-parameters for the case of varying routing systems and countermeasures and integrate the optimal hyper-parameters for various network performances.
物联网环境下基于深度强化学习的特征选择方法和最优超参数入侵检测系统
物联网设备的不断涌现,极大地增加了网络流量、复杂性和不断变化的互联网环境,使其更容易受到安全攻击。因此,需要一种基于先进机器学习方法的强大而优雅的入侵检测系统(IDS)来保护物联网环境。本文讨论了基于深度强化学习(DRL)的网络入侵检测系统(NIDS)的特征选择方法。然而,DRL模型的结构和训练仍然是一项具有挑战性的任务。此外,DRL-IDS的有效性和准确性在很大程度上取决于合适的超参数适应,即不同的超参数会导致IDS性能的显著差异。此外,由于超参数的商业价值,保密性可能被认为是必要的,专有算法可能会保护它们的专有使用。因此,我们为DRL智能体的训练找到了不同的最优超参数值。此外,我们从理论上和经验上评价了不同超参数的有效性。例如,我们评估了不同路由系统和对策情况下的超参数,并整合了各种网络性能的最优超参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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