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Cyber Weather Forecasting: Forecasting Unknown Internet Worms Using Randomness Analysis

机译:网络天气预报:使用随机性分析预测未知的Internet蠕虫

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Since early responses are crucial to reduce the damage from unknown Internet attacks, our first consideration while developing a defense mechanism can be on time efficiency and observing (and predicting) the change of network statuses, even at the sacrifice of accuracy. In the recent security field, it is an earnest desire that a new mechanism to predict unknown future Internet attacks needs to be developed. This motivates us to study forecasting toward future Internet atacks, which is referred to as CWF (Cyber Weather Forecasting). In this paper, in order to show that the principle of CWF can be realized in the real-world, we propose a forecasting mechanism called FORE (Forecasting using RE-gression analysis) through the real-time analysis of the randomness in the network traffic. FORE responds against unknown worms 1.8 times faster than the early detection mechanism, named ADUR (Anomaly Detection Using Randomness check), that can detect the worm when only one percent of total number of vulnerable hosts are infected. Furthermore, FORE can give us timely information about the process of the change of the current network situation. Evaluation results demonstrate the prediction efficiency of the proposed mechanism, including the ability to predict worm behaviors starting from 0.03 percent infection. To our best knowledge, this is the first study to achieve the prediction of future Internet attacks.
机译:由于早期响应对于减少未知Internet攻击造成的损害至关重要,因此在开发防御机制时,我们的首要考虑可能是准时高效并观察(并预测)网络状态的变化,即使牺​​牲准确性也是如此。在最近的安全领域中,迫切需要开发一种新的机制来预测未知的未来Internet攻击。这激发了我们研究对未来互联网攻击的预测,这被称为CWF(网络天气预报)。在本文中,为了证明CWF的原理可以在现实世界中实现,我们通过实时分析网络流量中的随机性,提出了一种称为FORE(使用RE回归分析的预测)的预测机制。 。 FORE对未知蠕虫的响应速度比早期检测机制ADUR(使用随机性检查进行异常检测)的速度快1.8倍,后者可以在仅易受感染的主机总数的百分之一被感染时检测蠕虫。此外,FORE可以为我们及时提供有关当前网络状况变化过程的信息。评估结果证明了所提出机制的预测效率,包括从0.03%感染开始预测蠕虫行为的能力。据我们所知,这是第一项能够预测未来互联网攻击的研究。

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