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A Cooperative Deep Belief Network for Intrusion Detection

机译:协作深度信任网络进行入侵检测

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With the large-scale promotion of cloud computing, intrusion detection is a necessary way to guaranteen cloud security. However, because of the lack of adaptive model, detection accuracy is still a challenge issue in intrusion detection. In our works, based on attribute significant expressing cooperative deep belief network (CDBN) was proposed for specific attack in intrusion detection. Firstly, a specific attack multi-view division method was proposed to extract the significant features of specific attack. secondly, an adaptive coding mechanism based on multi-view encoding was described to denoise and compress the attack features.finally, based on cumulative prospects, an cooperative decision-making deep belief network was proposed for cooperative intrusion detection. Thought testing and verified on the NSL-KDD data set, it proved that our proposed method has good applicability and high detection rate compared to the current general model.
机译:随着云计算的大规模推广,入侵检测是保证云安全的一种必不可少的方法。然而,由于缺乏自适应模型,检测精度仍然是入侵检测中的挑战性问题。在我们的工作中,基于属性的有效表达协同深度信念网络(CDBN)被提出用于入侵检测中的特定攻击。首先,提出了一种针对特定攻击的多视图划分方法,以提取特定攻击的显着特征。其次,提出了一种基于多视角编码的自适应编码机制,以对攻击特征进行降噪和压缩。最后,基于累积的前景,提出了一种用于协同入侵检测的协同决策深度信念网络。通过对NSL-KDD数据集的思想测试和验证,证明了与现有的通用模型相比,本文提出的方法具有良好的适用性和较高的检测率。

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