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LENTA: Longitudinal Exploration for Network Traffic Analysis

机译:Lenta:网络流量分析的纵向探索

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In this work, we present LENTA (Longitudinal Exploration for Network Traffic Analysis), a system that supports the network analysts to easily identify traffic generated by services and applications running on the web, being them benign or possibly malicious. First, LENTA simplifies analysts' job by letting them observe few hundreds of clusters instead of the original hundred thousands of single URLs. Second, it implements a self-learning methodology, where a semi-supervised approach lets the system grow its knowledge, which is used in turn to automatically associate traffic to previously observed services and identify new traffic generated by possibly suspicious applications. This lets the analysts easily observe changes in the traffic, like the birth of new services, or unexpected activities. We follow a data driven approach, running LENTA on real data. Traffic is analyzed in batches of 24-hour worth of traffic. We show that LENTA allows the analyst to easily understand which services are running on their network, highlights malicious traffic and changes over time, greatly simplifying the view and understanding of the traffic.
机译:在这项工作中,我们呈现Lenta(网络流量分析纵向探索),一个支持网络分析师的系统,以便轻松识别Web上运行的服务和应用程序生成的流量,而是可能恶意。首先,Lenta通过让他们观察几百个集群而不是原来的数千个单一URL来简化分析师的工作。其次,它实现了一种自学习方法,其中半导体方法允许系统发展其知识,其依次自动将流量与先前观察到的服务,并确定由可能可疑应用程序生成的新流量。这让分析师轻松观察交通的变化,如新服务的诞生或意外活动。我们遵循数据驱动方法,在实际数据上运行Lenta。分析了24小时交通的批量分析了流量。我们展示了Lenta允许分析师轻松理解其网络上运行哪些服务,突出显示恶意流量并随着时间的推移而变化,大大简化了对流量的看法和了解。

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