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首页> 外文期刊>International Journal of Security and Networks >A real-time botnet detection model based on an efficient wrapper feature selection method
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A real-time botnet detection model based on an efficient wrapper feature selection method

机译:基于高效包装器特征选择方法的实时僵尸网络检测模型

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摘要

Botnets are one of the most widespread and serious threats of cybersecurity that have infected millions of computers around the world over the past few years. Previous research has shown that machine learning methods can accurately detect botnet attacks. However, these methods often do not address the problem of real-time botnet detection, which is one of the main challenges in this area and is essential to prevent the damage caused by botnet attacks. This paper aims to present an efficient real-time model for botnet detection. In the proposed method, a subset of the effective features in detecting the bot traffic is initially selected using the world competitive contests algorithm. Then, based on the selected features, a support vector machine model is created offline to detect real-time bot traffic from the normal one. The test results show that the proposed method can detect botnets with 95% accuracy and outperforms other methods.
机译:僵尸网络是在过去几年中感染了全球数百万计算机的最普遍和严重的网络安全威胁之一。 以前的研究表明,机器学习方法可以准确地检测僵尸网络攻击。 然而,这些方法通常不会解决实时僵尸网络检测的问题,这是该领域的主要挑战之一,对于防止僵尸网络攻击造成的损害至关重要。 本文旨在为僵尸网络检测提供有效的实时模型。 在所提出的方法中,最初使用世界竞争竞赛算法选择检测机器人流量的有效特征的子集。 然后,基于所选功能,将脱机以脱机创建支持向量机模型以检测来自普通的实时机器人流量。 测试结果表明,该方法可以检测具有95%的精度和越优于其他方法的僵尸网络。

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