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Designing online network intrusion detection using deep auto-encoder Q-learning

机译:使用深度自动编码器Q-Learning设计在线网络入侵检测

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摘要

Because of the increasing application of reinforcement learning (RL), particularly deep Q-learning algorithm, research organizations utilize it with increasing frequency. The prediction of cyber vulnerability and development of efficient real-time online network intrusion detection (NID) systems are progressions toward becoming RL-powered. An open issues in NID is the model design and prediction of real-time online data composed of a series of time-related feature patterns. There have been concerns regarding the operation of the developed systems because cyber-attack scenarios vary continuously to circumvent NID. These issues have been related to the human interaction significance and the decrease in accuracy verification. Therefore, we employ an RL that permits a deep auto-encoder in the Q-network (DAEQ-N). The proposed DAEQ-N attempts to achieve the maximum prediction accuracy in online learning systems into which continuous behavior patterns are fed and which are trained with more significant weights by classifying it as either "normal" or "anomalous." (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于增强学习(RL)的应用越来越多,特别是深度Q学习算法,研究组织利用了频率的增加。网络漏洞的预测和高效的实时在线网络入侵检测(NID)系统的开发是成为RL-Powered的进展。 NID中的开放问题是由一系列与时间相关的特征模式组成的实时在线数据的模型设计和预测。由于网络攻击情景不断变化,因此有关发达系统的运作令人担忧。这些问题与人类互动意义和准确性验证的降低有关。因此,我们使用允许在Q-Network(DAEQ-N)中的深度自动编码器的RL。该提议的DAEQ-N试图在线学习系统中实现最大预测精度,通过将其作为“正常”或“异常”来培养连续行为模式的最大预测精度。 (c)2019年elestvier有限公司保留所有权利。

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