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Deep in the Dark - Deep Learning-Based Malware Traffic Detection Without Expert Knowledge

机译:深入深入的基于深度学习的恶意软件交通检测,没有专业知识

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With the ever-growing occurrence of networking attacks, robust network security systems are essential to prevent and mitigate their harming effects. In recent years, machine learning-based systems have gain popularity for network security applications, usually considering the application of shallow models, where a set of expert handcrafted features are needed to pre-process the data before training. The main problem with this approach is that handcrafted features can fail to perform well given different kinds of scenarios and problems. Deep Learning models can solve this kind of issues using their ability to learn feature representations from input raw or basic, non-processed data. In this paper we explore the power of deep learning models on the specific problem of detection and classification of malware network traffic, using different representations for the input data. As a major advantage as compared to the state of the art, we consider raw measurements coming directly from the stream of monitored bytes as the input to the proposed models, and evaluate different raw-traffic feature representations, including packet and flow-level ones. Our results suggest that deep learning models can better capture the underlying statistics of malicious traffic as compared to classical, shallow-like models, even while operating in the dark, i.e., without any sort of expert handcrafted inputs.
机译:随着网络攻击的不断增长的发生,强大的网络安全系统对于预防和减轻伤害效果至关重要。近年来,基于机器学习的系统对网络安全应用程序具有普及,通常考虑应用浅模型,其中需要一组专家手工制作功能来预处理数据。这种方法的主要问题是手工制作的功能可能无法在鉴于不同类型的情景和问题上表现出良好。深度学习模型可以使用他们从输入原始或基本非处理数据中学习特征表示的能力来解决这种问题。在本文中,我们利用输入数据的不同表示,探讨了对恶意软件网络流量的检测和分类的特定问题的强大功能。作为与现有技术相比的主要优点,我们考虑直接从被监视字节的流作为输入到所提出的模型的输入,并评估不同的原始流量特征表示,包括数据包和流量级别。我们的结果表明,与经典浅型号相比,深入学习模型可以更好地捕捉恶意流量的潜在统计数据,即使在黑暗中运行,即,没有任何一类专家的手工投入。

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