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Proposal and Evaluation of Methods Using the Quantification Theory and Machine Learning for Detecting CC Server Used in a Botnet

机译:僵尸网络中使用定量理论和机器学习检测C&C服务器的方法的建议和评估

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摘要

In recent years, the damage caused by botnets has increased and become a big problem. To solve this problem, we proposed a method to detect unjust C&C servers by using Hayashi's quantification theory class II. This method is able to detect unjust C&C servers, even if they are not included in a blacklist. However, it was predicted that the detection rate for this method decreases with passing time. Therefore, we have been continuing the investigation of the detection rate and adjusting the optimal detection method in different time periods. This paper deals with the results of an investigation for 2014. In addition, we newly introduce a method using a support vector machine (SVM) for comparison with quantification theory class II. We found that the detection rates by using quantification theory class II and those by the SVM are both very good, with very little difference in accuracy between them.
机译:近年来,僵尸网络造成的破坏越来越大,成为一个大问题。为了解决这个问题,我们提出了一种使用林氏量化理论II类来检测不公正的C&C服务器的方法。即使不包括在黑名单中,此方法也能够检测不公正的C&C服务器。但是,据预测,该方法的检测率随着时间的流逝而降低。因此,我们一直在继续研究检测率,并在不同时间段内调整最佳检测方法。本文介绍了2014年的调查结果。此外,我们新介绍了一种使用支持​​向量机(SVM)与量化理论II类进行比较的方法。我们发现,使用II类量化理论和SVM进行的检测率都非常好,两者之间的准确度差异很小。

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