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A DDoS Attack Situation Assessment Method via Optimized Cloud Model Based on Influence Function

机译:基于影响函数的优化云模型的DDOS攻击情况评估方法

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摘要

The existing network security situation assessment methods cannot effectively assess the Distributed denial-of-service (DDoS) attack situation. In order to solve these problems, we propose a DDoS attack situation assessment method via optimized cloud model based on influence function. Firstly, according to the state change characteristics of the IP addresses which are accessed by new and old user respectively, this paper defines a fusion feature value. Then, based on this value, we establish a V-Support Vector Machines (V-SVM) classification model to analyze network flow for identifying DDoS attacks. Secondly, according to the change of new and old IP addresses, we propose three evaluation indexes. Furthermore, we propose index weight calculation algorithm to measure the importance of different indexes. According to the fusion index, which is optimized by the weighted algorithm, we define the Risk Degree (RD) and calculate the RD value of each network node. Then we obtain the situation information of the whole network according to the RD values, which are from each network nodes with different weights. Finally, the whole situation information is classified via cloud model to quantitatively assess the DDoS attack situation. The experimental results show that our method can not only improve the detection rate and reduce the missing rate of DDoS attacks, but also access the DDoS attack situation effectively. This method is more accurate and flexible than the existing methods.
机译:现有的网络安全局势评估方法无法有效地评估分布式拒绝服务(DDOS)攻击情况。为了解决这些问题,我们通过基于影响功能的优化云模型提出了DDOS攻击情况评估方法。首先,根据新用户和旧用户访问的IP地址的状态变更特性,本文定义了融合特征值。然后,基于此值,我们建立V-Support向量机(V-SVM)分类模型,以分析网络流以识别DDOS攻击。其次,根据新的和旧IP地址的变化,我们提出了三个评估指标。此外,我们提出了索引权重计算算法来测量不同索引的重要性。根据由加权算法优化的融合索引,我们定义了风险程度(RD)并计算每个网络节点的RD值。然后,我们根据具有不同权重的每个网络节点的RD值获得整个网络的情况信息。最后,通过云模型对整个情况信息进行分类,以定量评估DDOS攻击情况。实验结果表明,我们的方法不仅可以提高检测率并降低DDOS攻击的缺失,还可以有效地访问DDOS攻击情况。该方法比现有方法更准确,灵活。

著录项

  • 来源
    《Computers, Materials & Continua》 |2019年第3期|1263-1281|共19页
  • 作者单位

    Key Laboratory of Internet Information Retrieval of Hainan Province Hainan Universty Haikou 570228 China;

    Key Laboratory of Internet Information Retrieval of Hainan Province Hainan Universty Haikou 570228 China;

    Key Laboratory of Internet Information Retrieval of Hainan Province Hainan Universty Haikou 570228 China College of Information Science & Technology Hainan University Haikou 570228 China;

    Department of Computer Science University of Central Arkansas Conway AR 72035 USA;

    Key Laboratory of Internet Information Retrieval of Hainan Province Hainan Universty Haikou 570228 China;

    Key Laboratory of Internet Information Retrieval of Hainan Province Hainan Universty Haikou 570228 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    DDoS attack; V-SVM; influence function; cloud model;

    机译:DDOS攻击;V-SVM;影响功能;云模型;

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