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Voting-based intrusion detection framework for securing software-defined networks

机译:基于投票的入侵检测框架,用于保护软件定义的网络

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摘要

Software-defined networking (SDN) is an emerging paradigm in enterprise networks because of its flexible and cost-effective nature. By decoupling control and data plane, SDN can provide various defense solutions for securing futuristic networks. However, the architectural design and characteristics of SDN attract several severe attacks. Distributed denial of service (DDoS) is considered as a major destructive cyber attack that makes the services of controller unavailable for its legitimate users. In this research article, an intrusion detection framework is proposed to detect DDoS attacks against SDN. The proposed framework relies on voting-based ensemble model for the attack detection. Ensemble model is a combination of multiple machine learning classifiers for prediction of final results. In this research article, we propose and analyze three ensemble models named as Voting-CMN, Voting-RKM, and Voting-CKM particularly to benchmarking datasets such as UNSW-NB15, CICIDS2017, and NSL-KDD, respectively. For validation of the proposed models, a cross-validation technique is used with the prediction algorithms. The effectiveness of proposed models is evaluated in terms of prominent metrics (accuracy, precision, recall, and F-measure). Experimental results indicate that the proposed models achieve better performance in terms of accuracy as compared with other existing models.
机译:软件定义的网络(SDN)是企业网络中的新兴范式,因为它具有灵活性和性价比的性质。通过解耦控制和数据平面,SDN可以为确保未来派网络提供各种防御解决方案。然而,SDN的建筑设计和特征吸引了几种严重的攻击。分布式拒绝服务(DDOS)被认为是一个主要的破坏性网络攻击,使控制器的服务不可用的合法用户。在本研究文章中,提出了一种入侵检测框架,以检测针对SDN的DDOS攻击。所提出的框架依赖于攻击检测的基于投票的集合模型。集合模型是多种机器学习分类器的组合,用于预测最终结果。在本研究文章中,我们提出并分析了名为投票-CMN,投票-RKM和投票-CKM的三个集合模型,尤其是分别基于UNSW-NB15,CicIDS2017和NSL-KDD的基准测试。为了验证所提出的模型,交叉验证技术与预测算法一起使用。拟议模型的有效性在突出的指标方面评估(准确性,精确,召回和F测量)。实验结果表明,与其他现有型号相比,建议的模型在准确性方面实现了更好的性能。

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