论文标题
arlif-ids-注意增强实时隔离森林入侵检测系统
ARLIF-IDS -- Attention augmented Real-Time Isolation Forest Intrusion Detection System
论文作者
论文摘要
分布式拒绝服务(DDOS)攻击是一种恶意尝试,试图通过大量的互联网流量淹没目标服务器,服务或网络的正常流量来破坏目标服务器,服务或网络的正常流量。物联网和软件定义的网络等新兴技术利用轻量级策略来早日检测DDOS攻击。先前的文献证明了较低的重要特征用于入侵检测的效用。因此,必须基于功能数量少的快速有效的安全识别模型至关重要。 在这项工作中,提出了一种新型的基于注意力的隔离森林入侵检测系统。该模型大大减少了生成模型的训练时间和记忆消耗。为了进行性能评估,该模型将通过两个基准数据集进行评估,即NSL-KDD数据集和KDDCUP'99数据集。实验结果表明,提出的注意力增强模型的执行时间显着减少了91.78%,而NSL-KDD和KDDCUP'99数据集的平均检测F1得分为0.93。绩效评估的结果表明,所提出的方法的复杂性较低,并且需要更少的处理时间和计算资源,从而优于基于机器学习算法的其他当前ID。
Distributed Denial of Service (DDoS) attack is a malicious attempt to disrupt the normal traffic of a targeted server, service or network by overwhelming the target or its surrounding infrastructure with a flood of Internet traffic. Emerging technologies such as the Internet of Things and Software Defined Networking leverage lightweight strategies for the early detection of DDoS attacks. Previous literature demonstrates the utility of lower number of significant features for intrusion detection. Thus, it is essential to have a fast and effective security identification model based on low number of features. In this work, a novel Attention-based Isolation Forest Intrusion Detection System is proposed. The model considerably reduces training time and memory consumption of the generated model. For performance assessment, the model is assessed over two benchmark datasets, the NSL-KDD dataset & the KDDCUP'99 dataset. Experimental results demonstrate that the proposed attention augmented model achieves a significant reduction in execution time, by 91.78%, and an average detection F1-Score of 0.93 on the NSL-KDD and KDDCUP'99 dataset. The results of performance evaluation show that the proposed methodology has low complexity and requires less processing time and computational resources, outperforming other current IDS based on machine learning algorithms.