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Research on Network Security Situation Awareness Based on the LSTM-DT Model

机译:基于LSTM-DT模型的网络安全局势意识研究

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摘要

To better understand the behavior of attackers and describe the network state, we construct an LSTM-DT model for network security situation awareness, which provides risk assessment indicators and quantitative methods. This paper introduces the concept of attack probability, making prediction results more consistent with the actual network situation. The model is focused on the problem of the time sequence of network security situation assessment by using the decision tree algorithm (DT) and long short-term memory(LSTM) network. The biggest innovation of this paper is to change the description of the network situation in the original dataset. The original label only has attack and normal. We put forward a new idea which regards attack as a possibility, obtaining the probability of each attack, and describing the network situation by combining the occurrence probability and attack impact. Firstly, we determine the network risk assessment indicators through the dataset feature distribution, and we give the network risk assessment index a corresponding weight based on the analytic hierarchy process (AHP). Then, the stack sparse auto-encoder (SSAE) is used to learn the characteristics of the original dataset. The attack probability can be predicted by the processed dataset by using the LSTM network. At the same time, the DT algorithm is applied to identify attack types. Finally, we draw the corresponding curve according to the network security situation value at each time. Experiments show that the accuracy of the network situation awareness method proposed in this paper can reach 95%, and the accuracy of attack recognition can reach 87%. Compared with the former research results, the effect is better in describing complex network environment problems.
机译:为了更好地了解攻击者的行为并描述网络状态,我们构建了一个用于网络安全局势意识的LSTM-DT模型,提供风险评估指标和定量方法。本文介绍了攻击概率的概念,使预测结果与实际网络情况更加一致。该模型专注于通过使用决策树算法(DT)和长短期存储器(LSTM)网络来侧重于网络安全局势评估的时间序列的问题。本文的最大创新是更改原始数据集中网络情况的描述。原始标签只有攻击和正常。我们提出了一个关于攻击的新想法,以获得每个攻击的可能性,并通过组合发生概率和攻击影响来描述网络情况。首先,我们通过数据集特征分布确定网络风险评估指标,我们向网络风险评估指数基于分析层次结构(AHP)提供相应的权重。然后,堆栈稀疏自动编码器(SSAE)用于学习原始数据集的特性。通过使用LSTM网络,可以通过处理的数据集预测攻击概率。同时,将应用DT算法来识别攻击类型。最后,我们根据每次的网络安全情况值绘制相应的曲线。实验表明,本文提出的网络情况提高方法的准确性可以达到95%,攻击识别的准确性可达到87%。与以前的研究结果相比,效果更好地描述了复杂的网络环境问题。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),14
  • 年度 2021
  • 页码 4788
  • 总页数 18
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:网络安全情况评估;分析层次过程;堆栈稀疏自动编码器;长短期内存网络;决策树;

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