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Hierarchical Clustering Based Network Traffic Data Reduction for Improving Suspicious Flow Detection

机译:基于分层聚类的网络流量数据缩减,以改善可疑流量检测

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摘要

Attacks like APT have lasted for a long time which need suspicious flow detection on long-time data. However, the challenge of effectively analyzing massive data source for suspicious flow diagnosis is unmet yet. Consequently, flow data reduction should be adopted, which refers to abstract the most relevant information from the massive dataset. Existing approaches to sampling flow data are inherently inaccurate unless running at high sampling rate. In this paper, we proposed HCBS (Hierarchical Clustering Based Sampling), a flow data reduction scheme, to alleviate such problems. We study the characteristics of flow data relating malicious activities and employ hierarchical clustering to sample data for further deep detection. Experiments on 1999 DARPA dataset demonstrates that HCBS reduces the size of the flow data by 40% with only a small loss in accuracy and significantly outperforms the compared state-of-the-art.
机译:像APT这样的攻击已经持续了很长时间,需要对长时间数据进行可疑的流量检测。但是,有效分析大量数据源以进行可疑流诊断的挑战尚未得到解决。因此,应采用流量数据约简,即从海量数据集中提取最相关的信息。除非以高采样率运行,否则现有的采样流量数据方法本质上是不准确的。在本文中,我们提出了HCBS(基于层次聚类的采样),一种流量数据缩减方案,以缓解此类问题。我们研究与恶意活动相关的流数据的特征,并使用层次聚类对数据进行采样以进行进一步的深度检测。在1999 DARPA数据集上进行的实验表明,HCBS将流数据的大小减少了40%,而准确性却仅有很小的损失,并且明显优于同类最新技术。

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