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Using XGBoost for Cyberattack Detection and Analysis in a Network Log System with ELK Stack

机译:使用eLK堆栈的网络日志系统中的XGBoost进行网络内人检测和分析

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Recently, cyberattackers have been developing more sophisticated ways to attack systems. Accordingly, identifying these attacks is getting more complicated in time. On many situations, network administrators were not capable of recognizing these attacks effectively or respond quickly. Whereas, to monitor and analyze the network log data which is very large and complicated is challenging. Therefore, in this case, there is a need to use artificial intelligence and machine learning techniques. In this paper, we develop a monitoring and analysis system for network log data. First, we used Elasticsearch, Logstash, and Kibana (ELK Stack) to monitor the network system. Second, we analyze the network log data use 'eXtreme Gradient Boosting' (XGBoost) to build a model of attack event detections. Finally, we use the XGBoost model to do cross-validated with the ELK Stack.
机译:最近,网络攻击者一直在开发更复杂的攻击系统方法。因此,识别这些攻击及时变得更加复杂。在许多情况下,网络管理员无法有效地识别这些攻击或快速响应。而且,监视和分析网络日志数据非常大而复杂的是具有挑战性的。因此,在这种情况下,需要使用人工智能和机器学习技术。在本文中,我们开发了用于网络日志数据的监控和分析系统。首先,我们使用Elasticsearch,Logstash和Kibana(elk堆栈)来监控网络系统。其次,我们分析网络日志数据使用“极端渐变升压”(XGBoost)来构建攻击事件检测的模型。最后,我们使用XGBoost模型与ELK堆栈交叉验证。

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