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Aligning Network Traffic for Serial Consistency and Anomalies with A Customized LSTM Model

机译:使用定制的LSTM模型为串行一致性和异常调整网络流量

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With the rapid development and wide application of the Internet, many researchers have paid attention to the problem of network security. As an active security defense technology, network anomaly detection plays an important role in ensuring network security. Traditional machine learning algorithm is difficult to identify rare attacks and the accuracy of multi-classification detection is low, to solve this problem, we propose an anomaly behavior detection model based on Long Short-Term Memory (LSTM). The first step is to preprocess the network traffic data. Then, we used the principal component analysis (PCA) method to reduce the dimensionality of the high-dimensional traffic data to extract important features. A special LSTM network model is designed to explore and model the characteristics of network traffic data and the serial consistency between the data. The experimental results show that the model has higher detection accuracy for abnormal traffic than the traditional machine learning based anomaly detection model, and also there is a certain detection rate for the new type of attack that does not appear in the training set.
机译:随着Internet的快速发展和广泛应用,许多研究人员已经关注了网络安全问题。网络异常检测作为一种主动的安全防御技术,在保证网络安全方面起着重要的作用。传统的机器学习算法难以识别稀有攻击,并且多分类检测的准确性较低,为解决这一问题,我们提出了一种基于长短期记忆(LSTM)的异常行为检测模型。第一步是预处理网络流量数据。然后,我们使用主成分分析(PCA)方法来降低高维交通数据的维数,以提取重要特征。设计了一种特殊的LSTM网络模型,以探索和建模网络流量数据的特性以及数据之间的串行一致性。实验结果表明,与传统的基于机器学习的异常检测模型相比,该模型对异常流量的检测精度更高,并且针对新型攻击的检测率没有出现在训练集中。

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