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首页> 外文期刊>Computers & Security >HSTF-Model: An HTTP-based Trojan detection model via the Hierarchical Spatio-temporal Features of Traffics
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HSTF-Model: An HTTP-based Trojan detection model via the Hierarchical Spatio-temporal Features of Traffics

机译:HSTF模型:通过流量分层时空特征的基于HTTP的特洛伊木马检测模型

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摘要

HTTP-based Trojan is extremely threatening, and it is difficult to be effectively detected because of its concealment and confusion. Previous detection methods usually are with poor generalization ability due to outdated datasets and reliance on manual feature extraction, which makes these methods always perform well under their private dataset, but poorly or even fail to work in real network environment, in this paper, we propose an HTTP-based Trojan detection model via the Hierarchical Spatio-Temporal Features of traffics (HSTF-Model) based on the formalized description of traffic spatio-temporal behavior from both packet level and flow level. In this model, we employ Convolutional Neural Network (CNN) to extract spatial information and Long Short-Term Memory (LSTM) to extract temporal information. In addition, we present a dataset consisting of Benign and Trojan HTTP Traffic (BTHT-2018). Experimental results show that our model can guarantee high accuracy (the F1 of 98.62% ~ 99.81% and the FPR of 0.34% ~ 0.02% in BTHT-2018). More importantly, our model has a huge advantage over other related methods in generalization ability. HSTF-Model trained with BTHT-2018 can reach the F1 of 93.51% on the public dataset ISCX-2012, which is 20+% better than the best of related machine learning methods.
机译:基于HTTP的木马非常威胁,由于隐藏和混乱,难以有效地检测到。先前的检测方法通常具有较差的泛化能力,由于过时的数据集,并且依赖手动特征提取,这使得这些方法在其私有数据集中始终表现良好,但在本文中,我们提出了不良或甚至无法在实际网络环境中工作。基于流量(HSTF-Model)的分层时空特征的基于HTTP的特洛伊木马检测模型,基于分组级别和流量水平的交通时空行为的正式描述。在该模型中,我们采用卷积神经网络(CNN)来提取空间信息和长短短期存储器(LSTM)以提取时间信息。此外,我们展示了一个由良性和木马HTTP流量组成的数据集(BTHT-2018)。实验结果表明,我们的模型可以保证高精度(F1为98.62%〜99.81%,FPR在Btht-2018中的0.34%〜0.02%)。更重要的是,我们的模型在泛化能力中的其他相关方法具有巨大的优势。 HSTF模型用BTHT-2018培训,可以在公共数据集ISCX-2012上达到93.51%的F1,比最佳的相关机器学习方法更好地达到93.51%。

著录项

  • 来源
    《Computers & Security》 |2020年第9期|101923.1-101923.15|共15页
  • 作者单位

    Institute of Information Engineering Chinese Academy of Sciences Beijing China School of Cyber Security University of Chinese Academy of Sciences Beijing China;

    Institute of Information Engineering Chinese Academy of Sciences Beijing China Key Laboratory of Network Assessment Technology University of Chinese Academy of Sciences Beijing China;

    Institute of Information Engineering Chinese Academy of Sciences Beijing China Key Laboratory of Network Assessment Technology University of Chinese Academy of Sciences Beijing China National Computer Network Emergency Response Technical Team/Coordination Center of China Beijing China;

    Institute of Information Engineering Chinese Academy of Sciences Beijing China Key Laboratory of Network Assessment Technology University of Chinese Academy of Sciences Beijing China School of Cyber Security University of Chinese Academy of Sciences Beijing China;

    Institute of Information Engineering Chinese Academy of Sciences Beijing China Key Laboratory of Network Assessment Technology University of Chinese Academy of Sciences Beijing China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    HTTP-based Trojan detection; Spatio-temporal features; Deep learning;

    机译:基于HTTP的木马检测;时空特征;深度学习;

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