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Adaptive Database Intrusion Detection Using Evolutionary Reinforcement Learning

机译:采用进化强化学习的自适应数据库入侵检测

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This paper proposes an adaptive database intrusion detection model that can be resistant to potential insider misuse with a limited number of data. The intrusion detection model can be adapted online using evolutionary reinforcement learning (ERL) which combines reinforcement learning and evolutionary learning. The model consists of two feedforward neural networks, a behavior network and an evaluation network. The behavior network detects the intrusion, and the evaluation network provides feedback to the detection of the behavior network. To find the optimal model, we encode the weights of the networks as an individual and produce populations of better individuals over generations. TPCE scenario-based virtual query data were used for verification of the proposed model. Experimental results show that the detection performance improves as the proposed model learns the intrusion adaptively.
机译:本文提出了一种自适应数据库入侵检测模型,可以对潜在的内幕滥用具有有限数量的数据。入侵检测模型可以在线使用进化加强学习(ERL)在线调整,这与增强学习和进化学习相结合。该模型由两个前馈神经网络,行为网络和评估网络组成。行为网络检测入侵,评估网络为行为网络的检测提供反馈。为了找到最佳模型,我们将网络的权重作为个人编码,并产生更好的人群。基于TPCE场景的虚拟查询数据用于验证所提出的模型。实验结果表明,随着所提出的模型自适应侵入,检测性能可提高。

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