基于分布式迁移网络学习的入侵检测

S. Gou, Yuqin Wang, L. Jiao, Jing Feng, Yao Yao
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引用次数: 13

摘要

为了解决目前大规模网络入侵检测算法对不同类型攻击检测性能不均衡的问题,本文提出了分布式传输网络学习算法。该算法将迁移学习引入到分布式网络增强算法中,指导性能较差的攻击学习,并采用实例迁移学习进行不同领域的自适应。在Kdd Cup ' 99数据集上的实验结果表明,该算法具有较高的效率和较好的性能。此外,在对其他攻击类型保持较高检测精度的同时,R2L攻击的检测精度得到了很大的提高。
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Distributed Transfer Network Learning Based Intrusion Detection
In order to solve the problem that there exists unbalanced detection performance on different types of attacks in current large-scale network intrusion detection algorithms, Distributed Transfer Network Learning algorithm is proposed in this paper. The algorithm introduces transfer learning into Distributed Network Boosting algorithm for instructing the attacks learning with poor performance, in which the instances transfer learning is adopted for different domain adaptation. The experimental results on the Kdd Cup’99 Data Set show that the proposed algorithm has higher efficacy and better performance. Further, the detection accuracy of R2L attacks has been improved greatly while maintaining higher detection accuracy of other attack types.
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