Behavior analysis of self-evolving botnets

Takanori Kudo, Tomotaka Kimura, Yoshiaki Inoue, Hirohisa Aman, K. Hirata
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引用次数: 13

Abstract

Machine learning techniques have been achieving significant performance improvements in various kinds of tasks, and they are getting applied in many research fields. While we benefit from such techniques in many ways, they can be a serious security threat to the Internet if malicious attackers become able to utilize them to detect software vulnerabilities. This paper introduces a new concept of self-evolving botnets, where computing resources of infected hosts are exploited to discover unknown vulnerabilities in non-infected hosts. We propose a stochastic epidemic model that incorporates such a feature of botnets, and show its behaviors through numerical experiments and simulations.
自进化僵尸网络的行为分析
机器学习技术已经在各种任务中取得了显著的性能改进,并在许多研究领域得到了应用。虽然我们在许多方面受益于这些技术,但如果恶意攻击者能够利用它们来检测软件漏洞,它们可能会对Internet构成严重的安全威胁。本文引入了自进化僵尸网络的新概念,利用受感染主机的计算资源发现未受感染主机的未知漏洞。我们提出了一个包含僵尸网络这一特征的随机流行病模型,并通过数值实验和模拟来展示其行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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