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Applying big data based deep learning system to intrusion detection

机译:将基于大数据的深度学习系统应用于入侵检测

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With vast amounts of data being generated daily and the ever increasing interconnectivity of the world's internet infrastructures, a machine learning based Intrusion Detection Systems (IDS) has become a vital component to protect our economic and national security. Previous shallow learning and deep learning strategies adopt the single learning model approach for intrusion detection. The single learning model approach may experience problems to understand increasingly complicated data distribution of intrusion patterns. Particularly, the single deep learning model may not be effective to capture unique patterns from intrusive attacks having a small number of samples. In order to further enhance the performance of machine learning based IDS, we propose the Big Data based Hierarchical Deep Learning System (BDHDLS). BDHDLS utilizes behavioral features and content features to understand both network traffic characteristics and information stored in the payload. Each deep learning model in the BDHDLS concentrates its efforts to learn the unique data distribution in one cluster. This strategy can increase the detection rate of intrusive attacks as compared to the previous single learning model approaches. Based on parallel training strategy and big data techniques, the model construction time of BDHDLS is reduced substantially when multiple machines are deployed.
机译:通过每天生成大量数据以及世界上互联网基础设施的互连,基于机器的入侵检测系统(IDS)已成为保护我们经济和国家安全的重要组成部分。以前的浅学习和深度学习策略采用了用于入侵检测的单一学习模型方法。单学习模型方法可能遇到问题以了解入侵模式的日益复杂的数据分布。特别地,单个深度学习模型可能无效地捕获来自具有少量样品的侵入攻击的独特模式。为了进一步提高基于机器学习的ID的性能,我们提出了基于大数据的分层深度学习系统(BDHDL)。 BDHDLS利用行为特征和内容特征来了解网络流量特征和存储在有效载荷中的信息。 BDHDL中的每个深度学习模型都集中精力,以努力学习一个集群中的唯一数据分布。与先前的单一学习模型方法相比,该策略可以提高侵入攻击的检出率。基于并行训练策略和大数据技术,当部署多台机器时,BDHDLS的模型施工时间将减少。

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