4.7 Article

ID-RDRL: a deep reinforcement learning-based feature selection intrusion detection model

Journal

SCIENTIFIC REPORTS
Volume 12, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-022-19366-3

Keywords

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Funding

  1. 100 Top Talents Program, SYSU [190158]
  2. National Key Laboratory [6142101190201, XM2020XT1009]
  3. [XM2020XT2136]

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This paper presents a network intrusion detection model based on RFE feature extraction and deep reinforcement learning. The model improves the efficacy of intrusion detection systems through feature selection and deep reinforcement learning, and demonstrates good performance in experiments.
Network assaults pose significant security concerns to network services; hence, new technical solutions must be used to enhance the efficacy of intrusion detection systems. Existing approaches pay insufficient attention to data preparation and inadequately identify unknown network threats. This paper presents a network intrusion detection model (ID-RDRL) based on RFE feature extraction and deep reinforcement learning. ID-RDRL filters the optimum subset of features using the RFE feature selection technique, feeds them into a neural network to extract feature information and then trains a classifier using DRL to recognize network intrusions. We utilized CSE-CIC-IDS2018 as a dataset and conducted tests to evaluate the model's performance, which is comprised of a comprehensive collection of actual network traffic. The experimental results demonstrate that the proposed ID-RDRL model can select the optimal subset of features, remove approximately 80% of redundant features, and learn the selected features through DRL to enhance the IDS performance for network attack identification. In a complicated network environment, it has promising application potential in IDS.

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