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A Cooperative Deep Belief Network for Intrusion Detection

机译:用于入侵检测的合作深度信仰网络

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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必要方法。但是,由于缺乏自适应模型,检测精度仍然是入侵检测中的挑战问题。在我们的作品中,基于属性表达的合作深层信仰网络(CDBN),以便在入侵检测中进行特定攻击。首先,提出了一种特定的攻击多视图分割方法来提取特定攻击的显着特征。其次,描述了一种基于多视图编码的自适应编码机制来表示并压缩攻击特征。基于累积前景,基于累积前景,提出了一个合作的深度信念网络用于协作入侵检测。在NSL-KDD数据集上思考测试和验证,证明我们所提出的方法具有良好的适用性和高检测率与当前的一般模型相比。

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