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Towards using transfer learning for Botnet Detection

机译:迈向使用转移学习进行僵尸网络检测

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Botnet Detection has been an active research area over the last decades. Researchers have been working hard to develop effective techniques to detect Botnets. From reviewing existing approaches it can be noticed that many of them target specific Botnets. Also, many approaches try to identify any Botnet activity by analysing network traffic. They achieve this by concatenating existing Botnet datasets to obtain larger datasets, building predictive models using these datasets and then employing these models to predict whether network traffic is safe or harmful. The problem with the first approaches is that data is usually scarce and costly to obtain. By using small amounts of data, the quality of predictive models will always be questionable. On the other hand, the problem with the second approaches is that it is not always correct to concatenate datasets containing network traffic from different Botnets. Datasets can have different distributions which means they can downgrade the predictive performance of machine learning models. Our idea is instead of concatenating datasets, we propose using transfer learning approaches to carefully decide what data to use. Our hypothesis is “Predictive Performance can be improved by using transfer learning techniques across datasets containing network traffic from different Botnets”.
机译:在过去的几十年中,僵尸网络检测一直是活跃的研究领域。研究人员一直在努力开发有效的技术来检测僵尸网络。通过回顾现有方法,可以注意到其中许多方法都是针对特定僵尸网络的。同样,许多方法试图通过分析网络流量来识别任何僵尸网络活动。他们通过连接现有的僵尸网络数据集以获得更大的数据集,使用这些数据集建立预测模型,然后使用这些模型来预测网络流量是安全还是有害来实现这一目标。第一种方法的问题在于,数据通常是稀缺的,而且获取成本很高。通过使用少量数据,预测模型的质量将始终是可疑的。另一方面,第二种方法的问题在于,并置包含来自不同僵尸网络的网络流量的数据集并不总是正确的。数据集可以具有不同的分布,这意味着它们可以降低机器学习模型的预测性能。我们的想法不是连接数据集,而是建议使用转移学习方法来仔细决定要使用的数据。我们的假设是“可以通过对包含来自不同僵尸网络的网络流量的数据集使用转移学习技术来提高预测性能”。

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