Proactive Computer Network Monitoring based on Homogeneous LSTM Ensemble

R. Shikhaliyev
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Abstract

Computer networks are getting more complex these days. A computer network failure can result in the loss of important data, disruption of network services and applications, and economic loss and threaten national security. Therefore, it is crucial to detect failures on time and diagnose their root cause, which is possible with the help of proactive computer network monitoring. The paper proposes a conceptual model of a system for proactive computer network monitoring. Proactive monitoring is based on predicting the network behavior. To achieve high prediction accuracy, we propose to use a homogeneous ensemble, which consists of a single base learning algorithm. Base learning LSTM models for an ensemble of deep neural networks were created using the bagging algorithm. We use the CICIDS2017 intrusion detection evaluation dataset to evaluate the proposed approach. Experimental results show that our method is an effective approach to improving the accuracy of anomaly prediction in computer networks.
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基于同构LSTM集成的主动计算机网络监控
如今,计算机网络正变得越来越复杂。计算机网络故障会造成重要数据丢失、网络服务和应用中断、经济损失和威胁国家安全。因此,及时发现故障并诊断其根本原因至关重要,这可以借助主动计算机网络监控来实现。提出了一种主动计算机网络监控系统的概念模型。主动监控是基于对网络行为的预测。为了达到较高的预测精度,我们建议使用单一基学习算法组成的同构集成。利用bagging算法建立了深度神经网络集成的基础学习LSTM模型。我们使用CICIDS2017入侵检测评估数据集来评估所提出的方法。实验结果表明,该方法是提高计算机网络异常预测精度的有效途径。
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