紧凑流特征用于实时DDoS攻击分类的可行性评估

M. Sidiq, Nanda Iryani, A. Basuki, Arief Indriarto Haris, Rd. Angga Ferianda
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引用次数: 0

摘要

从研究趋势来看,利用网络流特征训练分布式拒绝服务(DDoS)攻击分类器将比基于逐包的方法具有更高的分类性能和效率。然而,现有的基于流的分类器使用臃肿的特征和离线流提取,不适合实时DDoS防护。本研究探讨了使用可编程开关直接提取实时DDoS攻击分类的紧凑流特征的可行性。该方法只考虑了4个流特征:IP协议、数据包计数器、总字节计数器和网络流的增量时间。在CICDDoS2019数据集上的评估结果显示,与使用膨胀特征(24 - 82个特征)的作品相比,分类性能相当。决策树和随机森林分类器在准确率、精密度、召回率和F1分数上得分≥89.5%,效果最好。本文提出的模型可以对12种DDoS攻击中的10种进行正确的分类,仅不能区分基于SSDP和udp的DDoS攻击。此外,训练后的分类器在未见过的4280万流量数据上保持了与≤20万流量数据相似的性能,显示出更好的泛化能力。最后,该方法在决策树分类器上支持高达每秒960万次流推断的快速分类性能,适合于实时应用。
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Feasibility Evaluation of Compact Flow Features for Real-time DDoS Attacks Classifications
According to the research trend, training the distributed denial of services (DDoS) attacks classifier using network flow features will yield higher classification performances and efficiency than the per-packet-based approach. Nonetheless, the existing flow-based classifier uses bloated features and offline flow extraction that is not suitable for real-time DDoS protection. This study investigates the feasibility of compact flow features that can be directly extracted using a programmable switch for real-time DDoS attack classification. The proposed method considers only four flow features: IP protocols, packet counter, total byte counter, and the delta time of a network flow. The evaluation results on the CICDDoS2019 dataset showed a comparable classification performance to the works that use bloated features (24 - 82 features). The best result was achieved by the decision tree and the random forest classifier showing ≥ 89.5% scores in accuracy, precision, recall, and F1 score. The proposed models can classify 10 out of 12 DDoS attacks correctly, failing only to discriminate between SSDP and UDP-based DDoS attacks. In addition, the trained classifier shows a better generalization ability by retaining similar performances on unseen 42.8 millions flow data while trained on ≤ 200 thousand flow data. At last, the proposed method is suitable for real-time application since it supports quick classification performance of up to 9.6 millions of flow inferring per second on the Decision Tree classifier.
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