基于长短期记忆和 XGBoost 的 Mirai 僵尸网络检测对抗学习

Vajratiya Vajrobol , Brij B. Gupta , Akshat Gaurav , Huan-Ming Chuang
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引用次数: 0

摘要

当今世界,数字威胁呈上升趋势,其中一个特别令人担忧的威胁是 Mirai 僵尸网络。这种恶意软件旨在感染和指挥一系列物联网(IoT)设备。近来,Mirai 攻击的使用愈演愈烈,从而威胁到连接到网络的众多设备的平稳运行。此类攻击会带来不良后果,包括干扰服务或泄露机密信息。为了应对这种日益严重的威胁,需要智能、灵活的检测技术来应对网络攻击者使用的新方法。本研究的目的是开发一种针对 Mirai 僵尸网络攻击的弹性防御技术。长短期记忆项(LSTM)和 XGBoost 的组合性能最佳,准确率高达 97.7%。通过这种组合,目的是加强我们的网络防御,抵御复杂和动态运行的 Mirai 僵尸网络,进一步提高数字世界的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial learning for Mirai botnet detection based on long short-term memory and XGBoost

In today's world, where digital threats are on the rise, one particularly concerning threat is the Mirai botnet. This malware is designed to infect and command a collection of Internet of Things (IoT) devices. The use of Mirai attacks has intensified in recent times, thus threatening the smooth operation of numerous devices that are connected to a network. Such attacks carry adverse consequences that include interference with services or the leakage of confidential information. To fight this growing threat, smart and flexible detection techniques are required to counter the new methods cyber attackers use. The aim of this research is to develop a resilient defense against Mirai botnet attacks. The Long Short Term Memory term (LSTM) and XGBoost combined have the best performance of 97.7% accuracy score. With this combination, the aim is to strengthen our cyber defenses against sophisticated and dynamically operating Mirai botnets to further enhance the security of our digital world.

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