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Time series analyses for forecasting network intrusions

机译:时间序列分析预测网络侵犯

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Intrusion Detection Systems are fast-growing techniques for monitoring and garnering electronic evidences about suspicious activities that signify threats to computer systems. Generally, these mechanisms overwhelmingly describe and record patterns of suspicious packets as alerts in the form of intrusion logs. Thereafter, analysts must subsequently validate the content of each intrusion log to ascertain the validity of each alert. Secondly, high level of expertise is required to discern each alert. However, more time and resources are unduly spent at the expense of countermeasures that ought to be proactively initiated to thwart attacks in progress. Accordingly, TSA-Log analyzer that uses a computationally fast technique and a uniform baseline to determine patterns of intrusions is proposed in this paper. Validations that are carried out on five publicly available datasets demonstrate that propagation strategies of intrusions, efficient countermeasures and the extent of similarity of intrusions can be forecasted giving the knowledge of the patterns of alerts in intrusion logs.
机译:入侵检测系统是用于监控和加入电子证据的快速增长技术,这些可疑活动表示对计算机系统威胁的可疑活动。通常,这些机制压倒性地描述和记录可疑数据包的模式,如入侵日志形式的警报。此后,分析师将随后验证每个入侵日志的内容,以确定每个警报的有效性。其次,识别每个警报需要高水平的专业知识。但是,在牺牲期限的情况下,更多的时间和资源得到了应经受积极启动的对策,以挫败正在进行的攻击。因此,本文提出了使用计算快速技术的TSA-Log分析器和统一基线来确定入侵模式。在五个公共数据集中执行的验证表明,可以预测入侵的传播策略,有效的对策和入侵的相似性程度,以了解入侵日志中的警报模式。

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