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The effect of datagram size and susceptible population on the epidemiology of fast self-propagating malware

机译:数据报大小和易感人群对快速自传播恶意软件流行病学的影响

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The cost of a security event caused by fast self-propagating malware (a worm) has been estimated to be up to US$2.6 billion. Additionally, network malware outbreaks have been observed that spread at a significant pace across the global internet, with an observed infection level of more than 90 percent of vulnerable hosts within 10 minutes. The threat posed by such fast-spreading malware is therefore significant, particularly given the fact that network operator / administrator intervention is not likely to take effect within the typical epidemiological timescale of such malware infections. The internet worm simulator (IWS) is a finite state machine (FSM) based simulator capable of simulating the largescale epidemiology of fast self-propagating malware. Deterministic mathematical models require significantly less computation, however, lack the detail of FSM based simulation. This article focusses on the effect of common worm attributes on the contact coefficient of an SI model. The trends observed are presented, and their impact discussed. It is intended that this work can be used by researchers and professionals, to aid their understanding of large-scale worm outbreaks.
机译:由快速自我传播的恶意软件(蠕虫)引起的安全事件的成本估计高达26亿美元。此外,已经观察到网络恶意软件爆发,并以极快的速度分布在全球互联网上,在10分钟内观察到感染率超过90%的易受攻击主机。因此,这种快速传播的恶意软件所构成的威胁是巨大的,尤其是考虑到网络运营商/管理员的干预不太可能在此类恶意软件感染的典型流行病学时限内生效的事实。互联网蠕虫模拟器(IWS)是基于有限状态机(FSM)的模拟器,能够模拟快速自我传播恶意软件的大规模流行病学。确定性数学模型所需的计算量大大减少,但是缺少基于FSM的仿真的细节。本文重点介绍常见蠕虫属性对SI模型的接触系数的影响。介绍了观察到的趋势,并讨论了其影响。旨在使研究人员和专业人员可以使用这项工作,以帮助他们了解大规模蠕虫的爆发。

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