Intelligent Outlier Detection with Optimal Deep Reinforcement Learning Model for Intrusion Detection

S. G. Mohana Priya, K. PradeepMohankumar
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引用次数: 3

Abstract

Intrusion detection system (IDS) acts as an essential part to detect malicious activity in the cyber domain. Earlier works on IDS are mainly based on statistical, machine learning (ML), and deep learning (DL) approaches. Since deep reinforcement learning (DRL) becomes an emerging research area, it can be employed for intrusion detection and thereby accomplishes security in the present digital world. This paper focuses on the design of intelligent outlier detection with optimal deep reinforcement learning (IOD-ODRL) technique for intrusion detection. The proposed IOD-ODRL technique encompasses an Isolation Forest (iForest) based outlier detection approach to eliminate the existence of outliers in the test data. Besides, optimal Q-learning based DRL technique is employed for the detection and classification of intrusions. Moreover, the learning rate of the DRL technique is optimally chosen by the use of sandpiper optimization (SPO) algorithm. Furthermore, the design of outlier detection and SPO based learning rate selection results in improved detection performance. In order to investigate the superior performance of the IOD-ODRL technique, a wide range of simulations take place on benchmark datasets. The experiment results indicated that the betterment of the IOD-ODRL model interms of several metrics.
基于最优深度强化学习模型的智能离群点入侵检测
入侵检测系统(IDS)是检测网络领域恶意活动的重要组成部分。早期的IDS研究主要基于统计学、机器学习(ML)和深度学习(DL)方法。由于深度强化学习(DRL)是一个新兴的研究领域,它可以用于入侵检测,从而实现当今数字世界的安全。本文研究了基于最优深度强化学习(IOD-ODRL)技术的入侵检测智能离群点检测设计。提出的IOD-ODRL技术包含一种基于隔离森林(ifforest)的离群值检测方法,以消除测试数据中存在的离群值。采用基于最优q学习的DRL技术对入侵进行检测和分类。利用矶鹞优化(sandpiper optimization, SPO)算法对DRL技术的学习率进行了优化选择。此外,基于异常点检测和SPO学习率选择的设计提高了检测性能。为了研究IOD-ODRL技术的优越性能,在基准数据集上进行了广泛的模拟。实验结果表明,IOD-ODRL模型在多个指标上都得到了改进。
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