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Understanding DDoS cyber-attacks using social media analytics

机译:使用社交媒体分析了解DDoS网络攻击

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Cyber-attacks are cheap, easy to conduct and often pose little risk in terms of attribution, but their impact could be lasting. The low attribution is because tracing cyber-attacks is primitive in the current network architecture. Moreover, even when attribution is known, the absence of enforcement provisions in international law makes cyber attacks tough to litigate, and hence attribution is hardly a deterrent. Rather than attributing attacks, we can re-look at cyber-attacks as societal events associated with social, political, economic and cultural (SPEC) motivations. Because it is possible to observe SPEC motives on the internet, social media data could be valuable in understanding cyber attacks. In this research, we use sentiment in Twitter posts to observe country-to-country perceptions, and Arbor Networks data to build ground truth of country-to-country DDoS cyber-attacks. Using this dataset, this research makes three important contributions: a) We evaluate the impact of heightened sentiments towards a country on the trend of cyber-attacks received by the country. We find that, for some countries, the probability of attacks increases by up to 27% while experiencing negative sentiments from other nations. b) Using cyber-attacks trend and sentiments trend, we build a decision tree model to find attacks that could be related to extreme sentiments. c) To verify our model, we describe three examples in which cyber-attacks follow increased tension between nations, as perceived in social media.
机译:网络攻击很便宜,易于实施,而且归因风险通常很小,但其影响可能是持久的。低归因是因为跟踪网络攻击在当前网络体系结构中是原始的。而且,即使知道了归因,国际法中也没有执行条款,网络攻击很难提起诉讼,因此归因几乎没有威慑力。除了将攻击归因于攻击之外,我们还可以将网络攻击视为与社会,政治,经济和文化(SPEC)动机相关的社会事件。由于可以在互联网上观察SPEC的动机,因此社交媒体数据对于理解网络攻击可能非常有价值。在这项研究中,我们使用Twitter帖子中的情绪观察国家间的感知,并使用Arbor Networks数据建立国家间DDoS网络攻击的基础真相。使用该数据集,这项研究做出了三个重要贡献:a)我们评估了对一个国家的情绪上升对该国家所接收的网络攻击趋势的影响。我们发现,对于某些国家/地区而言,遭受其他国家的负面情绪打击的可能性增加了27%。 b)使用网络攻击趋势和情绪趋势,我们建立了决策树模型,以查找可能与极端情绪相关的攻击。 c)为了验证我们的模型,我们描述了三个示例,其中社交攻击使网络攻击跟随国家之间日益加剧的紧张关系。

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