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An efficient and robust deep learning based network anomaly detection against distributed denial of service attacks

机译:基于深度学习的网络异常检测,用于分布式拒绝服务攻击的基于网络异常检测

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摘要

The number of devices connected to the Internet is increasing day by day. This increase causes cyber-attacks to be larger and more complex. It is important to sdetect the anomalies rapidly when there is a cyber-attack. In detecting anomalies, high false positive rate is obtained by using feature extraction based on statistical calculations and machine learning algorithms. In proposed approach, the measured values obtained from the network are normalized between 0 and 1. These values applied to autoencoder model trained with optimum hyper parameters. This model contributes to feature learning and dimensional reduction. Support vector machines effectively differentiate between normal and DDOS attack traffic by using these features. The CICIDS dataset and virtually generated DDOS traffic are used to validate the proposed approach and measure its performance. The results show that the proposed approach speeds up training and testing times and performs better classification performance metrics than most previous approaches. The novelty of the study is that AE-SVM trained with CICIDS successfully captures virtually generated DDOS traffic data. Despite the unbalanced data set, 99.1% test success was achieved in detection of DDOS traffic which is produced with Kali Linux. This success contributed to the solution of the high false-positive problem compared to other models.
机译:与互联网连接的设备数量日益增加。这种增加导致网络攻击更大,更复杂。在有网络攻击时迅速迅速痉挛异常。在检测异常时,通过使用基于统计计算和机器学习算法使用特征提取来获得高误率。在提出的方法中,从网络获得的测量值在0到1之间归一化。这些值应用于具有最佳超参数的AutoEncoder模型。该模型有助于特征学习和尺寸减少。支持向量机通过使用这些功能有效地区分正常和DDOS攻击流量。 Cicids DataSet和实际生成的DDOS流量用于验证所提出的方法并测量其性能。结果表明,建议的方法加速了培训和测试时间,而且比以前的最先前的方法更好地进行分类性能指标。该研究的新颖性是,用Cicids培训的AE-SVM成功地捕获了几乎生成了DDOS交通数据。尽管数据集不平衡,但在检测用Kali Linux生产的DDOS流量中取得了99.1%的测试成功。与其他模型相比,这一成功促成了高假阳性问题的解决方案。

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