基于贝叶斯方法的网络态势感知风险分析

Moyinoluwa Abidemi Bode, S. Oluwadare, B. K. Alese, A. Thompson
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引用次数: 10

摘要

为了确定网络环境中风险的结果,必须检测不可预测的网络攻击者和威胁。这项工作开发了一个贝叶斯网络分类器来分析网络情况下的网络流量。它是在不确定的情况下帮助推理确定确定性的工具。它进一步分析了使用改进的风险矩阵标准的风险水平。开发的分类器对从KDD Cup'99数据集中提取的490,021条记录进行了实验。实验结果表明,贝叶斯网络分类器与关联规则挖掘在分类拒绝服务攻击(DoS)时具有相同的性能水平,而与遗传算法相比,贝叶斯网络分类器对探测攻击和用户到根攻击(U2R)的分类效果更好,对DoS的分类效果相同。分类结果表明,贝叶斯网络分类器是一种在网络安全领域发展良好的分类模型。此外,从适应风险矩阵分析的风险水平表明,DoS攻击发生最频繁,落在一般不可接受的风险区域。
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Risk analysis in cyber situation awareness using Bayesian approach
The unpredictable cyber attackers and threats have to be detected in order to determine the outcome of risk in a network environment. This work develops a Bayesian network classifier to analyse the network traffic in a cyber situation. It is a tool that aids reasoning under uncertainty to determine certainty. It further analyze the level of risk using a modified risk matrix criteria. The classifier developed was experimented with various records extracted from the KDD Cup'99 dataset with 490,021 records. The evaluations showed that the Bayesian Network classifier is a suitable model which resulted in same performance level for classifying the Denial of Service (DoS) attacks with Association Rule Mining while as well as Genetic Algorithm, the Bayesian Network classifier performed better in classifying probe and User to Root (U2R) attacks and classified DoS equally. The result of the classification showed that Bayesian network classifier is a classification model that thrives well in network security. Also, the level of risk analysed from the adapted risk matrix showed that DoS attack has the most frequent occurrence and falls in the generally unacceptable risk zone.
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